[0001] The invention relates to the field of signal processing, and more particularly to
a technique for deriving automatically high level information expressed by an electronic
input signal by analysing the signal's low-level characteristics. In this context,
the term high-level refers to the global characteristics of the signal content, while
the term low-level refers to the fine grain structure of the signal itself, typically
at the level of its temporal or spatial modulation.
[0002] For instance, in the case of audio signals corresponding a given music title, such
as contained in an audio file readable by a music player, examples of its high-level
expression would be an indication of whether the title pertains to a sung or instrumental
piece of music, the musical genre, musical complexity, overall timbre, tempo, or the
rhythm structure, etc., while the low-level characteristics would be the signal's
time-dependent parameters such as amplitude, pitch, etc. analysed over successive
short sampling periods. The signals in question can thus be in the form of digital
data accessed from a memory or inputted as a digital stream, or they can be in analogue
form.
[0003] In such audio applications, the high-level information is normally known by the term
"descriptor". Generally, a descriptor expresses a quality, or dimension, of the content
represented by the signal, and which is meaningful to a human or to a machine for
processing high-level information. Depending on what they express, descriptors attribute
a value which can be of different types:
- a Boolean, e.g. true/false to indicate whether or not a music title is sung,
- a number to express information quantitatively against a reference scale, e.g. 7.3
against a scale of 1 to 10 for a global music energy descriptor,
- an indication of a selection from a list of labels, e.g. "military music" to indicate
a musical genre from a preset list.
[0004] In the field of music, descriptors are of interest notably in the expanding field
of music access systems and Electronic Music Distribution (EMD). To facilitate user
access to large music databases, descriptors of music titles are needed. EMD belongs
to the more general concept of music information retrieval (MIR), which is the technique
of intelligently searching and accessing musical information in large music databases.
[0005] Traditionally, EMD systems use either manually entered descriptors (e.g. using software
systems developed commercially by the companies "Moodlogic" and "AllMusicGuide". The
descriptors are then used for accessing music browsers, using a search by similarity,
or a search by example, or any other known database searching technique.
[0006] A key issue in extracting automatically descriptors for audio signals is that it
is very difficult to map signal properties with perceptive categories. In the prior
art, attempts have been made to extract specific descriptors from a sound signal,
these being documented notably in:
- Scheirer, Eric D., "Tempo and Beat Analysis of Acoustic Musical Signals", J. Acoust. Soc. Am. (JASA) 103:1 (Jan 1998), pp 588-601., for tempo,
- Aucouturier Jean-Julien, Pachet Francois, "Music Similarity Measures: What's the Use? ", Proceedings of the 3rd International Symposium on Music Information Retrieval
(ISMIR02), Paris - France, October 2002, for timbre,
- Pachet, F., Delerue, O. ,Gouyon, F., "Extracting Rhythm from Audio Signals ", SONY Research Forum, Tokyo, December 2000, for rhythm, and.
- Berenzweig A.L., Ellis D. P. W., "Locating Singing Voice Segments within Music Signals", IEEE Workshop on Applications of Signal Processing to Acoustics and Audio (WASPAA01),
Mohonk NY, October 2001.
[0007] There are however many other dimensions, i.e. descriptors, of music that can be extracted
from the signal. For instance:
danceability
music for children
military music
music for slow
global energy
sung versus instrumental
original versus remix
acoustic versus electr(on)ic
live versus studio
musical complexity
musical density
etc.
[0008] While such descriptors are readily discernible by a human listener, the technical
problem of producing them electronically from raw music data signals is reputed to
be particularly difficult. For instance, there is no immediately apparent low-level
characteristic of a raw music signal from which it is possible to identify whether
it pertains to a sung piece or to an instrumental. This is particularly true when
the sung voice is mixed with music. Even the global energy descriptor has no straightforward
link with the energy level of the raw signal.
[0009] Some descriptors, such as the musical genre, are influenced by cultural references
and therefore require criteria to be entered from a specific population sample.
[0010] In view of the foregoing, the invention provides for an automated tool which takes
for input a test database containing a set of reference signals, for instance audio
files readable by a music player, at least one arbitrary descriptor that can be potentially
correlated to the signals, a grounded truth value of that descriptor for each of the
database signals and a set of elementary signal processing functions. The tool then
selects functions of that set to construct one compound function or more, and automatically
applies it on the signals of the database. Depending the correlations between the
value returned by the function and grounded truths, new compound functions are created
and tried, until an arbitrary end condition is reached.
[0011] More particularly, according to a first aspect, the present invention relates to
a method of generating a general extraction function which can operate on an input
signal to extract therefrom a predetermined global characteristic value expressing
a feature of the information conveyed by that signal,
characterised in that it comprises the steps of:
- generating automatically compound functions, each compound function being composed
of at least one of a set of elementary functions, by using means that handle the elementary
functions as symbolic objects,
- operating said compound functions on at least one reference signal having a pre-attributed
global characteristic value and serving for evaluation, by using means that process
the elementary functions as executable operators,
- determining the correlation between the values extracted by those compound functions
as a result of operating on the reference signal and the pre-attributed global characteristic
value of the reference signal, and
- selecting the general extraction function among those compound functions for which
the correlation is relatively high.
[0012] The invention provides for many advantageous optional embodiments, which are outlined
below.
[0013] The compound functions are preferably generated in successive populations,
wherein each new population of functions takes as a basis earlier population functions
which produce a relatively high correlation.
[0014] The method can be performed by the steps of:
a) preparing at least one reference signal for which the predetermined global characteristic
value is pre-attributed,
b) preparing a population of compound functions each composed of at least one elementary
function,
c) modifying compound functions of the current population using the means that handle
their elementary functions as symbolic objects,
d) operating the compound functions of the population on at least one reference signal
using the means that exploit the elementary functions as executable operators, to
obtain a calculated value for each compound function of the population in respect
of the reference signal,
e) for at least some compound functions of the population, determining the degree
of matching between its calculated value and the pre-attributed value for the signal
from which that value has been calculated,
f) selecting compound functions of the population producing the best matches to form
a new population of functions,
g) if an ending criterion is not satisfied, returning to step c), where the new population
becomes the current population,
h) if an ending criterion is satisfied, outputting at least one compound function
of the current new population as a general function.
[0015] The compound functions are preferably produced by random choices guided by rules
and/or heuristics.
[0016] The rules and/or heuristics can comprise at least one rule which forbids, from a
random draw for selecting an elementary function to be associated with a part of a
compound function under construction, an elementary function that would be formally
inappropriate for that part.
[0017] The rules and/or heuristics can comprise at least one heuristic which favours, in
a random draw for selecting an elementary function to be associated with a part of
a compound function under construction, an elementary function which is considered
to produce potentially useful technical effects in association with that part, and/or
which discourages from the random draw an elementary function considered to produce
technical effects of little or no use in association with that part.
[0018] The rules and/or heuristics can comprise at least one heuristic which ensures that
a compound function comprises only elementary functions that each produce a meaningful
technical effect in their context.
[0019] The rules and/or heuristics can comprise at least one heuristic which takes into
account at least one overall characteristic of the reference signals.
[0020] Advantageously, a new population of functions is produced using genetic programming
techniques.
[0021] The genetic programming techniques comprise at least one of following:
- crossover,
- mutation,
- cloning.
[0022] A crossover operation and/or a mutation operation can be guided by at least one heuristic
cited above.
[0023] The means that handle the elementary functions as symbolic objects preferably manage
the functions in accordance with a tree structure comprising nodes and connecting
branches, in which each node corresponds to a symbolic representation of a constituent
unit function, the tree having a topography in accordance with the structure of the
function.
[0024] Advantageously, the method further comprises a step of submitting a compound function
to at least one rewriting rule executed by processing means to ensure that said compound
function is cast in its most rational form or most efficient form in respect of execution
efficiency.
[0025] Preferably the method uses a caching technique for evaluating a function, in which
results of previously calculated parts of functions are stored in correspondence with
those parts, and a function currently under calculation is initially analysed to determine
whether at least a part of said function can be replaced by a corresponding stored
result, said part being replaced by its corresponding result if such is the case.
[0026] The method can then comprise the steps of checking the usefulness of results stored
according to a determined criterion, and of erasing those found not to be useful,
the criterion for keeping a result Ri being a function which takes into account: i)
the calculation time to produce Ri, ii) the frequency of use of Ri and, optionally,
iii) the size (in bytes) of Ri.
[0027] The elementary functions can comprise signal processing operators and mathematical
operators.
[0028] The method can further comprise a step of validating a general function against at
least one reference signal having a known value for the general characteristic, and
which was not used to serve as the reference.
[0029] The signal can express an audio content, and the global characteristic can be a descriptor
of the audio content.
[0030] The audio content can be in the form of an audio file, the signal being the signal
data of the file.
[0031] Examples of descriptors for which the invention can be use are:
- a global energy indication,
- a sung or instrumental audio content,
- an evaluation of the danceability,
- an acoustic or electric sounding audio content,
- presence or absence of a solo instrument, e.g. guitar or saxophone solo.
[0032] According to a second aspect, the invention relates to a method of extracting a global
characteristic value expressing a feature of the information conveyed by a signal,
characterised in that it comprises calculating for that signal the value of a general
function produced specifically by the method according to the first aspect for that
global characteristic.
[0033] According to a third aspect, the invention relates an apparatus for generating a
general function which can operate on an input signal to extract therefrom a predetermined
global characteristic value expressing a feature of the information conveyed by that
signal,
characterised in that it comprises:
- means for generating automatically compound functions, each compound function being
composed of at least one of a set of elementary functions, the means handling the
elementary functions as symbolic objects,
- means for operating the compound functions on at least one reference signal having
a pre-attributed global characteristic value serving for evaluation, the means processing
the elementary functions as executable operators,
- means for determining the correlation between the values extracted by those compound
functions as a result of operating on the reference signal and the pre-attributed
global characteristic value of the reference signal, and
- means for selecting the general extraction function among those compound functions
for which the correlation is relatively high.
[0034] According to a third aspect, the invention relates to an apparatus according to the
third aspect configured to execute any one of the optional aspects of the method set
out above, it being understood that the features defined in the context of the method
can be implemented mutatis mutandis to the apparatus.
[0035] According to an fourth aspect, the invention relates to the use of the apparatus
according to the third aspect as a fully autonomous automatic descriptor extraction
function generating system.
[0036] According to a fifth aspect, the invention relates to the use of the apparatus according
to the third aspect as a descriptor extraction means.
[0037] According to a sixth aspect, the invention relates to the use of the apparatus according
to the third aspect as an authoring tool for producing descriptor extraction functions.
[0038] According to a seventh aspect, the invention relates to the use of the apparatus
according to the third aspect as an evaluation tool for externally produced descriptor
extraction functions.
[0039] According to an eighth aspect, the invention relates to a general function in a form
exploitable by an electronic machine, produced specifically by the apparatus according
to the third aspect.
[0040] According to a ninth aspect, the invention relates to a software product containing
executable code which, when loaded in a data processing apparatus, enables the latter
to perform the method according to the first aspect.
[0041] In the preferred embodiment, the above iterative search procedure through successive
populations is implemented by what is known as genetic programming. The functions
― which typically take the form of executable code ― are tried and the results serve
to automatically create new populations of functions in accordance with genetic programming
techniques, taking the best fitting functions in a manner somewhat analogous to selection
and submitting those selected functions to actions corresponding e.g. to crossover
and mutation phenomena occurring in biological processes at chromosome level. The
remarkable aspect here resides in applying a genetic programming technique on functions
which take for argument raw electronic signals.
[0042] When applied to the field of music files, the proposed invention allows to extract
arbitrary descriptors from music signals. More precisely, the embodiment does not
extract a particular descriptor, but rather, given a set of music titles containing
both examples (and possibly counter-examples) for a given descriptor, builds automatically
a function that extracts from audio signals an optimum value. The same system can
be used to produce a function associated to an arbitrary descriptor such as one listed
in the earlier part of the introduction, which can then be exploited as a general
function for that associated descriptor, in the sense that it can be made to operate
subsequently on any music file to extract the value of the descriptor for that file
(assuming its signals are compatible).
[0043] The design of the system is based on extended experiments in the field of audio/music
description extraction. During these experiments the applicant observed that a deep
knowledge of signal processing was required to design accurate and robust signal processing
extractors. Each extractor can be seen here as a function that takes as argument a
given music signal (typically 3 minutes of audio), and outputs a value. This value
can be of various types: a float (for the tempo), a vector (for the timbre), a symbol
(for instrumental versus song discrimination), etc.
[0044] The main task of extractor design is to find the right composition of basic, low-level
signal processing functions to yield a value that is as correlated as possible to
the values obtained by psycho-acoustic tests.
[0045] The preferred embodiment contains a representation of a human expertise in signal
processing: it will try different combinations of signal processing functions, evaluate
them, and compare them against human perceptive values. Using an algorithm based on
genetic programming, different signal processing functions will be tried concurrently,
and modified to find a satisfying extractor function.
[0046] Compared to existing approaches in music extraction, the system is one step higher:
its primary function is not to produce a descriptor for a signal, but rather a function
which itself will produce the descriptor, when applied on other music file signals
e.g. taken from a database of signals.
[0047] The invention and its advantages shall become more apparent from reading the following
description of the preferred embodiments, given purely as nonlimiting examples, with
reference to the appended drawings in which:
- figure 1 is a diagram showing the basic user input and output of a programmed system
for automatically generating descriptor extraction functions in accordance with the
invention;
- figure 2 is a simplified block diagram showing the main functional units of the system
shown in figure 1;
- figure 3 is a symbolic illustration showing the formal compatibility requirements
for two grouped elementary functions forming part of a compound function produced
by the system of figure 2;
- figure 4 is a symbolic illustration of an elementary function for performing a low-pass
filtering operation on a signal;
- figure 5 is a symbolic illustration of an elementary function for performing a short-time
fast Fourier transform operation on a signal;
- figure 6 is a symbolic illustration of a grouping of elementary functions forming
a term in a compound function;
- figure 7 is a diagram showing an example of a tree structure symbolic representation
of a compound function;
- figure 8 is a diagram showing a matrix of values calculated on a set of reference
signals for a population of compound functions, and how those values are used to determine
the fit of those functions with respect to a descriptor associated with the music
contents of those signals;
- figure 9 is a diagram showing, through a tree structure representation, how parts
of two compound functions are combined to form a new compound function using a crossover
operation according to a genetic programming technique;
- figure 10 is a diagram showing, through a tree structure representation, how a compound
function is mutated into a new compound function using a mutation operation according
to a genetic programming technique;
- figure 11 is a diagram showing, through a tree structure representation, how a caching
technique is implemented to acquire results data for a prior-results data cache and
to substitute a part of a function under calculation with a previously calculated
result;
- figure 12 is a flow chart showing the general steps performed by the system of figure
2 for producing a descriptor extraction function;
- figure 13 is an example of different functions and their fitness produced automatically
by the system of figure 2 for evaluating the presence of voice in music title; and
- figure 14 is an example of different compositions of descriptor extraction functions
in terms of elementary functions, and their fitness produced automatically by the
system to evaluate the global energy of music titles.
[0048] Figure 1 depicts a system 2 in accordance with the invention to indicate the raw
data on which it operates (user data input) and the output (user data output) it produces
from the latter. The example is based on a music data application, in which the system
2 generates as its user data output an executable function 4, referred to as a descriptor
extractor function (DE function). This function is then packaged in a data carrier
5 in a form suitable to be exploited for extracting a given descriptor from an arbitrary
audio file 6. The latter is typically formatted according to a recognised standard
such as CD audio, MP3, MPEG7, WAV, etc exploitable by a music player, and contains
a musical piece to which a descriptor value Dx is to be associated. The DE function
4 operates on the raw data signal Sx of the audio file 6, i.e. it takes the latter
as its argument or operand and returns the descriptor value DVex for that file. Naturally,
the signal Sx is assumed to be compatible with the DE function 4 as regards data format.
As mentioned in the introductory portion, the descriptor value is typically a number,
a Boolean, or a statement, and generally belongs to the class or real objects R
n.
[0049] The above data carrier 5 typically comprises a software package which can contain
other DE functions, e.g. for extracting other descriptor values, and possibly auxiliary
software code, e.g. for management and user assistance. The data carrier 5 can be
a physical entity, such as a CD ROM, or it can be in immaterial form, e.g. as downloadable
software accessible from the Internet.
[0050] The system 2 generates the DE function 4 on the basis of both the user data input
and internally programmed parameters, functions and algorithms, as shall be detailed
later.
[0051] The user data input serves inter alia to feed an internal learning database and constitutes
the raw learning material from which to model the DE function. This material includes
a set of m audio files A1 to Am and, for each one Ai(1 i m), a given value Dgti of
a specific descriptor De for the audio item Ti it contains. The audio files Ai are
formatted as for file 6 above, and thus each produce a respective signal Si when accessed
to reproduce the audio item Ti.
[0052] The respective descriptor values Dgt1-Dgtm associated to the audio files are established
by a human judge, or a panel of human judges. For instance, if the descriptor De in
question is the "global energy" of the music title, the judge or panel awards for
each respective title Ti a number within a range from a minimum (level of a lullaby,
for instance) to a maximum, and which constitutes the title's descriptor value Dgti.
These values Dgti are referred to "grounded truth" descriptor values.
[0053] Figure 2 shows the general architecture of the system 2. The system is preferably
implemented using the hardware of a standard personal computer PC. For ease of understanding,
the different types of data used are divided into respective databases 10-18 under
the general control of a data management unit 20, which further manages the overall
data flow of the system 2. The databases comprise:
- a learning database 10, which stores the signal data S1-Sm of the reference audio
files A1-Am in association their corresponding grounded truth descriptor values Dgt1-
Dgtm, supplied as the user data input (cf. figure 1);
- a library 12 of elementary functions EF1, EF2, EF3, ..., which serve as the basic
building blocks from which compound functions CF are created on a guided - or constrained
― random basis. A selected compound function, or possibly a selected group of compound
functions, shall become an outputted DE function 4;
- a heuristics database 14, which contains different types of guiding or constraining
rules that come into play in conjunction with random selection events, notably at
different stages in the elaboration of compound functions, as shall be explained in
more detail below;
- a formal rules and rewriting rule database 15, which contains a set of deterministic
rules for recasting automatically-generated compound functions into their formally
correct and most rational form;
- a prior results cache 16, which stores results of previously calculated parts of compound
functions in view of obviating the need to recalculate them when subsequently encountered;
and
- a validation database 18, which contains the same type of data as the learning database
10, but for other music titles. The audio data contained in that database are not
used as reference for elaborating the compound functions, and thus constitute a neutral
source for ultimately testing the validity of a candidate DE function 4 selected among
the compound functions.
[0054] The signal processing and overall management of the system are carried out by a main
processor unit 22 which runs programs contained in a main program memory 24. A user
interface 26 associated to a monitor 28, keyboard 30 and mouse 31 allows the user
input and output data of figure 1, as well as the internal programming data, to be
entered and extracted.
[0055] Figure 3 illustrates the principle of an elementary function EF as exploited by the
system 2. Being effectively an operator, the elementary function comprises executable
code and one or a set of parameter(s) which it can receive as input Pin, and which
defines the elementary function's boundary conditions. An elementary function acts
on an operand, or argument 32 ― which can be signal data or the output of a preceding
elementary function ― and generates an output that is the result of the code executed
on the operand data. An elementary function EF is catalogued in the system inter alia
by the type of operand, designated Toper, on which can operate and on the type of
output, designated Tout, it delivers. Types Toper and Tout can be the same or mutually
different for a given elementary function. Typical types include: signal, numerical
(single number, float, range), vector, or matrix. As explained further, the system
2 treats elementary functions EF ― which can be assimilated to modules ― as symbolic
objects or as executable operators depending on the nature of the processing required
in the course of elaborating a compound function CF.
[0056] Figure 4 illustrates an example of an elementary function in the form of a low pass
filter (LPF) operator. As such, its executable code comprises a digital LPF algorithm
and its input parameters Pip are the cut-off frequency F and optionally the attenuation
rate (dB/octave). The operand and output types are respectively Toper=Signal and Tout=Signal.
[0057] Figure 5 illustrates another example of an elementary function, this time in the
form of a short-time fast Fourier transform (short-time FFT) operator. The executable
code comprises a short time FFT algorithm, and its input parameters Pin are the sampling
window and summation limits. The operand and output types are respectively Toper=Signal
and Tout=matrix.
[0058] Figure 6 illustrates the principle of a string of elementary functions, the example
concerning three elementary functions EFa, EFb and EFc forming a term TCF of a compound
function that operates on a signal data S of an audio file, the term being TCF=EFc.EFb.EFa*S.
Note that in such a string of elementary functions, an elementary function also constitutes
an argument, or operand, for its left-hand neighbour (i.e. succeeding function) to
which its is joined by "*" function when the case arises. Also, an output of an elementary
function can include parameter input data for its neighbouring function. This is illustrated
in figure 6 by the output of function EFb, which produces inter alia a signal which
conveys a parameter Pin for its downstream function EFc, for instance the value of
a high-pass cut off frequency if the latter is a high-pass filter function.
[0059] A compound function CF can contain an arbitrary number of elementary functions related
by different arithmetical operators (+, -, * or ÷). Elementary functions connected
together by a multiplicative or divisional operator form a term; several terms can
be linked by associative operators + and - as the case arises when constructing a
compound function CF.
[0060] Among the programs stored in the main program memory 24 are:
- a compound function construction program 25, which has the role of generating compound
functions by assembling together a number of elementary functions EF. The latter are
typically signal or data processing functions that can each be considered as a single
unit operator or module that produces a determined technical effect on the signal
data Si of an audio file or on the output of another elementary function, and
- a function execution program 27, which is composed of the compound functions themselves,
these being exploited no longer as symbolic objects, but as executable algorithmic
entities for producing technically meaningful operations on signal data S.
[0061] These two programs 25 and 27 are under the overall control of a master program 29
which manages the overall system 2.
[0062] The compound function construction program 25 is based on genetic programming techniques
following an artificial intelligence (AI) approach. Accordingly, the elementary functions
EF are also handled as symbols, whereby they are treated as first class obj ects in
their symbolic representation.
[0063] Thus, the system 2 is capable of handling the elementary functions both as objects,
when executing the compound function (CF) construction program 25, and as executable
operators, notably for evaluating and testing the compound functions, when executing
the function execution program 27. To this end, these two programs 25 and 27 use languages
adapted respectively to handling objects and to carrying out numerical calculations,
an example of the latter being the "Matlab" language.
[0064] Table I gives a non-exhaustive example of elementary functions stored in the elementary
function library 12, together with their operand type Top, output type Tout and parameters.
Table I:
| sample list of elementary functions used by the system 2. |
| I.1 ― Mathematical functions |
| Function name |
Operation |
Param Pin |
Toper |
Tout |
| DERIV |
Time derivative |
- |
Signal |
Signal |
| MAX |
Max value of set |
- |
set of No.s |
No. |
| MIN |
Min value of set |
- |
set of No.s |
No. |
| SQUARE |
Raise power 2 |
- |
No. |
No. |
| LOG |
Logarithm |
- |
No. |
No. |
| MEAN |
ave value of set |
- |
set of Nos. |
No. |
| VAR |
variance of set |
- |
set of Nos. |
No.s |
| ABS(V) |
Absolute value |V| |
- |
signed V |
unsigned V |
| SUM |
Summation of terms |
|
No. |
set of No |
| SQRT |
Square root |
- |
No. |
No. |
| POWER |
Raise power 'i' |
Integer i |
No. |
No. |
| I.2 ― Signal processing functions |
| Function name |
Operation |
Param Pi |
Toper |
Tout |
| ENV. |
Envelope of signal |
- |
Signal |
Signal |
| FFT |
Fast Fourier transf. |
limits |
Signal |
Signal |
| stFFT |
short-time FFT |
limits/time |
Signal |
Matrix/Vector |
| AUTOCOR |
autocorrelation |
- |
Signal |
Vector |
| COR |
correlation |
- |
Signal/Signal |
Vector |
| LPF |
Low-pass filter |
Fcutoff/atten. |
Signal |
Signal |
| HPF |
High-pass filter |
Fcutoff/atten. |
Signal |
Signal |
| BPF |
Bandpass filter |
Flow/Fhigh/atten. |
Signal |
|
| Signal |
|
|
|
|
| FLAT |
Flatness |
|
Signal |
No. |
| E |
Energy |
|
Signal |
No. |
| PITCH |
Pitch |
- |
Signal |
No. |
| 1.3- Combining and connecting functions |
| Function name |
Operation |
|
Para Pi - |
|
| COMPOSITION o - |
| LOOP* |
Repeat until |
No. iterations |
|
|
| ( |
bracket |
| COMBINATION * |
Multiply |
|
- |
- |
| ÷ |
Divide |
- |
- |
|
| + |
Add |
- |
- |
|
| - |
Subtract |
- |
- |
|
| * Loop: Output of an iteration can be the input parameter for the next iteration. |
[0065] The last four combination operators are simply arithmetic operators which join successive
functions, but are treated as functions too.
[0066] Advantageously, when the system handles the elementary functions as symbols, as in
the above construction phase, it uses a tree structure.
[0067] According to the tree structure, a compound function CF is symbolised in terms of
nodes, where each node corresponds to one elementary function EF, and in which branches
connect the nodes according to the arithmetic operators +, -, *, ÷ used.
[0068] As an example, figure 7 illustrates the tree structure for the compound function
CF = MAX.DERIV.FFT.FFT.LPF(B1)(S) + ABS.PITCH.LPF(B2)(S) + PITCH.HPF(VARIANCE(S))(S).
The three terms are developed along three respective branches Br1-Br3. The three branches
join at the "+" function, which is the common link to CF. The order of appearance
of the elementary functions is followed along successive nodes, the first elementary
function (i.e. the first to operate on the signal) being nearest the free end of its
branch.
[0069] The CF construction program 27 initially begins by selecting and aggregating elementary
functions in a random fashion.
[0070] Elementary rules and heuristics intervene in this random process to govern the appropriateness
of combinations of elementary functions, notably as regards the incorporation of a
potential elementary function in the context of any elementary function already present
in term under construction.
[0071] Firstly, rules govern the function generation process on a number of different considerations,
among which are:
i) Formal rules. These rule out the existence of two combined elementary functions EFbEFa if their
types are not compatible. In other words, if for the above two functions the output
type Tout(a) of EFa is not the same as the operand type Toper(b) of EFb, then EFbEFa,
and elementary function EFa has already been selected, then elementary function EFb
is attributed a zero weighting coefficient for the random draw that is to select an
elementary function for which elementary function EFa is the operand. For example,
the formal rule weighting scheme would forbid the meaningless operator combinations
FFT.MAX.DERIVABS(V), etc.
The formal rules also ensure that the right-hand most function of a term in the compound
function has a signal operand type (Toper=S), given that it will necessarily operate
on the signal Si from an audio file.
ii) Boundary condition rules. These rules serve to impose constraints on the compound functions or their populations
having regard to the system parameters, such as: length constraint on the compound
functions, by weighting the number of elementary functions used to favour a prescribed
median value, the number of branch points (cf. the tree structure), the number of
compound functions produced to form a first population P, etc..
[0072] Secondly, knowledge-based heuristics generally operate by associating to each elementary
function EF a weighting coefficient affecting its random draw probability. These coefficients
are attributed dynamically according to immediate context. The heuristics can in this
way rule out some combinations of elementary functions through a zero weighting coefficient,
at one extreme, and force combinations by imposing an absolute maximum value coefficient
at the other extreme. A set of intermediate weighting coefficient values is provided
to allow the random process to determine the construction of compound functions, albeit
with constraints. These heuristics are generally derived from experience in using
the system and the user's formal or intuitive knowledge. They thus allow the user
to inject his or her know-how into the system and afford a degree of personalisation.
They can also be generated by the system itself on an automated basis, using algorithms
that detect similarities between compound functions that have been recognised as successful.
[0073] By using the range of attributable weighting coefficients in implementing these heuristics,
the system user can use them:
i) as a positive influence, i.e. to encourage the presence or combinations of elementary
functions that are of interest. For example, the system uses a knowledge based heuristic
to favour the presence of two successive FFTs on a signal S, i.e. FFT.FFT(S), this
being found to be conducive to interesting results;
ii) as a negative influence, i.e. that on the contrary to seek to prevent elementary
function combinations that are considered to be ineffective or technically inappropriate.
For instance, it has been found that the presence of three successive FFTs on a signal
S, i.e. FFT.FFT.FFT(S) does not usually produce interesting results. The corresponding
heuristic used by the system will thus give a low weighting coefficient to an FFT
elementary function in the draw for the elementary function to be the operand on the
existing combination of FFT.FFT.
[0074] Before the newly-formed compound functions are processed, they are advantageously
submitted to rewriting by application of rewriting rules stored in database 15. Rewriting
involves recasting compound functions from their initial form to a mathematically
equivalent form that allows them to executed more efficiently. It is governed by a
set of deterministic rewriting rules of varying levels of complexity which are executed
on each function CFi of the population by the main processor 22, those rules being
in machine-readable form.
[0075] Simple rewriting rules eliminate self-cancelling terms in a compound function. For
instance, if the compound function considered contains the terms HPF(S, Fa)+FFT(S)-
FFT(S), the rewriting rules shall tidy up the expression and reduce it to HPF(S, Fa).
[0076] Another category of rewriting rules eliminates elementary functions that are redundant
given their environment, i.e. which do not produce a technical effect. For instance,
if an expression contains a bandpass filtering function with a passband between frequencies
Fb and Fc, then the rules would eliminate any subsequent function in that term which
filter out frequencies outside that passband range, i.e. which are no longer present.
[0077] Other rewriting rules conduct simplifications of a more advanced type. For instance,
they will replace systematically the expression E(FFT(S)) by the equivalent, but more
easily calculable, expression E(S).
[0078] The implementation of the rewriting rules uses the tree structure of the compound
function under consideration. Each node, or section of the tree, is scanned against
the set of rewriting rules. Whenever a rewriting rule is applicable to a node or a
succession of nodes of the part of the tree being analysed, the node or succession
of nodes in question is rewritten according to that rule and replaced by a new tree
section or node that corresponds to the thus rewritten ― and hence simplified ― form
of the compound function.
[0079] Each time the tree is modified in this way, it is scanned again, as its new form
can create new opportunities for applying rewriting rules that were not evidenced
in the previous form of the tree. Accordingly, the tree scanning is repeated cyclically
until no changes have been brought for a complete scan.
[0080] To ensure that there is no risk of falling into infinite loops, the rewriting rules
do not produce a change that in itself leads to another change, and conversely, ad
infinitum. For instance, the system would not contain simultaneously a rule to rewrite
A+B as B+A and another rule to rewrite B+A as A+B (in fact, this would be the same
rule, infinitely applicable to the result of its own production, and therefore yielding
an unending loop)
[0081] Once the population P of compound functions has been formed in accordance with the
above heuristics and rules, the compound functions cease to be considered as symbolic
objects and are treated instead by the function execution program 27 according to
their specified functional definitions.
[0082] Specifically, a compound function CFi (1≤ i ≤ n) is treated by the system 2 as a
calculation routine using "Matlab" language and made to operate on the music file
data signals Sj (1≤j≤m) stored in the learning database 10 to produce an output value
Dij=CFi*(Sj). The signal Sj in question corresponds to a digitised form of an amplitude
(signal level) evolving in time t, the time frame of t typically being on the order
of 200 seconds in the case of a music title.
[0083] Each of the n compound functions CF1-CFn operates in this way on each of the m titles
stored in the learning database 10, thereby producing a total of n.m output values
Dij (for i=1 to n and j=1 to m) according to a matrix for the population P. This combination
of calculation events is illustrated symbolically in figure 8.
[0084] As shown in figure 8, the n.m output values are mapped in matrix MAT(P) which is
stored in a working memory of the main processor 22. These values are accessed at
a subsequent stage of evaluating the overall fit of each of the n compound functions
CF1-CFn with the descriptor De for which the grounded truths Dgt1-Dgtm were produced.
This evaluation is carried out by standard statistical analysis techniques. In the
illustrated example, each of the output m.n output values of the matrix MAT(P) is
compared with its respective corresponding grounded truth descriptor value Dgti. Specifically,
the set of m.n values Dij is analysed against corresponding grounded truth descriptor
values Dgt1-Dgtm for the descriptor De ascribed to the respective music titles T1-Tm.
[0085] For a given compound function CFi, the analysis here involves comparing the value
Dij with the Dgtj value for the corresponding audio file. This comparison is performed
for each of the audio files, so yielding m comparison values. These comparison values
are submitted to statistical analysis to obtain a global fit ― or fitness ― value
FIT(afj) with respect to the descriptor De for that function CFi. The global fitness
value FIT(afj) expresses objectively how well overall the descriptor values generated
by the function CFj match ― or correlate ― with the corresponding grounded truth descriptors
Dgt1-Dgtm.
[0086] The global fit in question is evaluated in the form appropriate for the descriptor,
for instance numerical closeness for a numerical descriptor, Boolean correspondence
for a Boolean descriptor, etc.
[0087] The above comparisons and statistical analysis are conducted for each of the n compound
functions CF1-CFn, and the respective fitness values FIT(af1)-FIT(afn) are stored.
[0088] Then a new population P1 of r compound functions is produced by taking for its members
those of the n compound functions CF1-CFn which yield the r best overall fit values
(r<n).
[0089] The basic comparisons and analysis in conducting the above procedure is indicated
in the algorithm below:
[0090] For CF1: comp. D11 with Dgt1; D12 with Dgt2; D13 with Dgt3; ...; D1m with Dgtm =>
STATISTICAL ANALYSIS => fit of CF1 with respect to descriptor De = FITaf1(De);
[0091] For CF2: comp. D21 with Dgt1; D22 with Dgt2; D23 with Dgt3; ...; D2m with Dgtm =>
STATISTICAL ANALYSIS => fit of CF2 with respect to descriptor De
= FITaf2(De)
[0092] For CF3: comp. D31 with Dgt1; D32 with Dgt2; D33 with Dgt3; ...; D3m with Dgtm =>
STATISTICAL ANALYSIS => fit of CF3 with respect to descriptor De = FITaf3(De) ;
....
[0093] For CFn: comp. Dn1 with Dgt1; Dn2 with Dgt2; Dn3 with Dgt3; ...; Dnm with Dgtm =>
STATISTICAL ANALYSIS => fit of CF3 with respect to descriptor De = FITafn(De).
→New population P1 = set of r compound functions CF yielding the
r best fits FITaf(De).
[0094] The r compound functions CF(1)1 to CF(1)r of the new population P1 are then processed
in their symbolic object form according to the above-described tree structure. The
aim here is to generate from that population P1 a next generation population P2 of
compound functions. Advantageously, the system achieves 2 this by using genetic programming
techniques. These programming techniques model aspects of biological regeneration
or reproduction process naturally ocurring at chromosone level, such as crossover
and mutation. In this case, the analogue to a chromosone is an elementary function
EF in its symbolic representation.
[0095] Genetic programming is in itself well documented, but hitherto reserved only to fields
remote from electronic signal processing. Remarkably, it can be implemented to a great
advantage in the present field by virtue of the present approach in which the compound
functions question, whose primary purpose is to operate on an electronic signal, are
conveniently made exploitable, at critical phases of their elaboration process, as
symbolic objects. This "object" form, which advantageosly uses the above-described
tree structure, thereby becomes amenable to genetic programming using standard knowledge
of applied genetic programming. Accordingly, detailed aspects involving normal knowledge
of genetic programming language and practice accessible to a person skilled in the
art of genetic programming shall not be detailed in the present description for reasons
of conciseness.
[0096] The concept of genetic programming applied to the present signal procesing functions
CF is illustrated in connection with two interesting aspects: crossover and mutation.
Each is implemented with adapted and specific rules and heuristics stored in the heuristics
database 14 and the rules database 15. Among the rules and heuristics applied in the
context of genetic programming are the formal and boundary condition rules, and knowledge-based
heuristics outlined above, and adapted to circumstances. Overall, the rules and heuristics
applied ensure that the compound functions resulting from genetic programming operations
are formally acceptable, have a potential for exhibiting an improvement (in terms
of fitness) compared the functions from which they are generated, and remain within
the system's operating limits.
[0097] Crossover. Simply stated, crossover involves taking two compound functions, say CF(1)p and AP(1)q,
(for population P1) and creating from them a new function CF(1)pq which contains a
mixing of functions CF(1)p and AP(1)q, in a manner analogous to two chromosomes combining
to form a new chromosome.
[0098] An example of a new function CF(1)pq produced by crossover of functions CF(1)p and
AP(1)q is illustrated by figure 9 using the tree representation. In this representation,
the elementary functions are designated in their abbreviated form: ep1-ep10 for compound
function CF(1)p and eq1 to eq10 for compound function CF(1)q.
[0099] Crossover is carried out by a crossover generator module 33 forming part of the compound
function construction program 25 stored in memory 24. The module 33 receives the two
functions CF(1)p and CF(1)q as input and analyses their tree structure using a set
of stored crossover rules and heuristics. The analysis seeks to determine, for each
function, a suitable break point along a branch. The break point divides the tree
in question into a portion that is to be rejected and a portion that is to be retained.
In the example, it can be seen that for compound function CF(1)p, the part of the
tree structure comprising elementary functions ep7 to ep10 is retained, and the part
on the other side of the break point comprising elementary functions ep1 to ep6 is
rejected. Similarly for compound function CF(1)q, the part of the tree structure comprising
elementary functions eq1 to eq6 is retained, and the part on the other side of the
break point comprising elementary functions eq7 to eq10 is rejected. The two retained
portions of the respective trees are joined together at their respective break points.
This is carried out by attaching with a straight branch the nodes of the respective
retained parts lying adjacent the break points. Thus, in the illustrated example,
node eq6 is attached by a branch to node ep7. The resultant crossover tree corresponding
to compound function CF(1)pq is then composed of elementary functions eq1-eq6, ep7-ep10.
[0100] More complex crossover operations can involve extracting at least one section of
a tree (not necessarily an end section) and inserting it within another tree by producing
one or several break points in the latter depending on where it is to be accommodated.
[0101] The break points are determined in a guided ― or constrained ― random draw, in which
the guidance is provided by a set of crossover rules and heuristics.
[0102] A first such rule is of the formal type, and requires that two nodes susceptible
of being joined together must be formally compatible from the point of view of types,
as described above in the context of formal rules. To this end, candidate break points
for the random draw are considered in mutually indexed pairs, each member of the pair
being associated to a respective tree. The corresponding nodes to be joined are identified
in terms of which ones correspond respectively to the operand and the operating function
among the pair. Only those pairs of break points satisfying the formal requirements
are accepted as candidates.
[0103] Thus, in the illustrated example, the rules in question shall ensure that despite
the crossover resulting from a random draw, the operand type Toper(ep7) of elementary
function ep7 is the same as the output type Tout(eq6) of elementary function eq6.
[0104] Another rule is of the boundary condition type and requires that the break point
should preferably be at the central portion of the tree, e.g. by using weighted random
draws, to ensure that the size of crossover-generated compound functions shall be
statistically similar in size over repeated generations.
[0105] Finally, knowledge-based heuristics are tested on crossover-generated compound functions.
The operators in the new compound function are tested one by one starting from the
break point. The knowledge-based heuristics provide a probability for each new operator,
regarding which the compound functions is accepted or rejected at each step.
[0106] Mutation. Mutation involves taking one compound function CF(1)s and forming a variant thereof
CF'(1)s. The variant can be produced by modifying one or a number of the parameters
of CF(1)s, and/or by modifying the function's structure, e.g. by adding, removing
or changing one or several of its elementary functions, or by any other modification.
[0107] An example of a new compound function CF'(1)s produced by mutation of a function
CF(1)s is illustrated by figure 10. In this representation, the initial compound function
CF(1)s has a tree structure formed of elementary functions es1 to es7 as shown.
[0108] This function is inputted to a mutation generator module 34 forming part of compound
function construction program 25. The mutation generator module 34 produces on that
function one or several mutations on a guided - or constrained - random basis.
[0109] In the illustrated example, the outputted mutated function CF'(1)s happens to differ
from the inputted function CF(1): i) at the level of the elementary function es6,
which is a lo pass filter operator whose parameter P'(es6) now specifies a cut-off
frequency of 450 Hz instead of 600 Hz in its original form P (es6), and ii) at level
of elementary function es1, which is simply being deleted.
[0110] The mutation process is governed by mutation rules and heuristics, which include
formal rules that likewise ensure that any changed function remains formally correct,
and boundary condition rules which govern the nature and number of mutations allowed,
etc.
[0111] The system can implement other genetic programming operations. For instance, it can
produce a cloning, which involves taking one compound function CF(1)t and forming
a variant thereof CF'(1)t. The variant has exactly the same functional structure as
the original function CF(1)s. Only the values of the fixed parameters are modified.
For instance, if the original compound function contains a low-pass filter with a
fixed cutoff frequency value of 500Hz, a clone would be the same compound function
with a different cutoff frequency value of 400Hz for instance. A cloning parameter
can control the extent of the variations of the values (for example +/- 10%). Note
that cloning is simply a special ― and restricted ― case of mutation in the sense
described above.
[0112] The genetic programming procedure comprising the above crossover and mutation operations
(and possibly other operations) are applied to the population P1 of functions over
a given period or number of cycles. When the procedure is terminated for the population,
there results a new population P2 of compound functions which are the genetic descendants
of those from population P1.
[0113] The number of compound functions CF(2) forming the population P2 is made to be the
same as for population P, so as to accommodate for a selection of the r best fitness
functions of that population to produce its own succeeding population of functions
P3. In order to keep the population size constant, the cumulated proportions of compound
function generated randomly (R%), by mutation (M%), by crossover (CO%), and cloning(C%),
has to be so that R + M + CO + C = 100%. This consideration applies to all succeeding
generations so that their populations do not dwindle in the course of eliminating
the lowest fitness functions. Thus, the creation of new population typically calls
for a repetition of the random creation procedure (described above for randomly creating
the initial population P) to top up the population, given that crossover operations
tend reduce the population (if C < CO).
[0114] The new population P2 is then treated in the same manner as the initial population
P, starting with a phase undergoing rewriting rules (the rules and heuristics listed
above have already applied explicitly or implicitly to that population P2 in the course
of the genetic programming (crossover and mutation) operations.
[0115] Accordingly, the correlation, or fitness of each compound function CF(2) of the new
population is determined against the grounded truth descriptor values Dgt1 to Dgtm
for the descriptor De. The procedure here is just as for obtaining population P1,
and the algorithm described above applies mutatis mutandis by replacing P with P1,
and P1 with P2.
[0116] The result gives a new set of the r best compound functions CF(2)1 to CF(2)r for
the descriptor De, forming the new population P2.
[0117] The above procedure is carried out iteratively over a given number of cycles, each
cycle producing a new population Pu from the previous population Pu-1 by genetic programming
and a selection of the best compound functions for the population Pu.
[0118] Implementation of heuristics.
[0119] Further aspects of the heuristics used by the system are outlined below, notably
for function generation (producing the population P) and genetic programming.
[0120] A heuristic can be represented as a function which has for argument (operand):
i) a current term: one or more functions or a tree section, corresponding to the existing
environment in terms of the composition of elementary functions EF - for instance
the elementary function combinations that have already been produced during an ongoing
function construction process;
ii) a potential term: likewise one or more functions or a tree section, for which
the possibility of incorporation into the current term is to be considered by the
heuristic.
[0121] The heuristic function produces from the above argument a result in the form of a
value in a specified range, e.g. from 0 to 10, which expresses the appropriateness
or interest of constructing a function in which the potential term is branched (according
to the tree representation) to the current term, e.g. as its argument.
[0122] The range of weighting coefficients (which are here expressed to one decimal) expresses
quantitatively the following:
weighting coefficient
| 0 |
potential term forbidden from random draw |
| 1 |
of very little interest |
| ... |
|
| 5 |
of medium interest |
| 9 |
extremely interesting |
| 10 |
potential term imposed (i.e. must be selected). |
The heuristic function(s) can come into play in the following example: current
term = LPF(500Hz).FFT.S
potential term (to become the argument (operand) of the current term) = FFT.DERIV.FFT.S
[0123] A heuristic shall determine the appropriateness of creating the branching where the
"S" of the current term becomes "FFT.DERIV.FFT.S".
[0124] In the above case, one example of an applicable heuristic function is the one, which
is here designated "HEURISTIC 245", that on the one hand favours the presence of two
FFTs (FFT.FFT.(...), and on the other hand discourages the presence of three FFTs
(FFT.FFT.FFT.(....). It is catalogued in the heuristics database 14 as:
HEURISTIC245:
- statement of purpose: "interesting to have FFT of FFT, but not FFT of FFT of FFT";
- form: HEURISTIC245(current term, potential term);
- potential term weighting coefficient attribution procedure:
if type of current term is FFT,
AND if current term does not contain other FFT type terms,
AND if type of potential term is FFT,
AND if potential term contains an FFT,
THEN : potential term's weighting coefficient = 0.1 {indeed, the complete function
would then have three FFTs, and a low weighting coefficient is therefore attributed}
ELSE: potential term's weighting coefficient = 8.0.
Procedures and statements of which the above is an example can be adapted to all other
heuristics of the database 14.
Another heuristic function designated HEURISTIC250 is as follows:
HEURISTIC250:
- statement of purpose: "give preference to a filtering on raw signals".
- potential term applicable: Filter class {LPF, HPF, BPF..}
- form HEURISTIC250(current term, filter class)
- potential term weighting coefficient attribution procedure:
if current term contains FFT, THEN: potential term's weighting coefficient = 0 {filtering
is meaningless if an FFT is carried out beforehand},
if current term contains CORRELATION, THEN: potential term's weighting coefficient
= 3 {if a correlation is carried out beforehand, filtering is of doubtful use, but
could nevertheless return an interesting value},
ELSE: potential term's weighting coefficient =7 {if the current term does not contain
signal modification operations such as FFT, CORRELATION, it is generally useful to
filter the signal to retain just some of its spectral components}.
Other heuristics can be implemented to take in account a given context, or an indication
of the descriptor De for which the compound function is constructed. These are referred
to as "context sensitive heuristics".
An example of a context sensitive heuristic is as follows:
Context sensitive heuristic CSHEURISTIC280
- statement of purpose: "to treat problems pertaining to a sung voice (presence, extraction,
....), whereby it is useful to use frequencies of the human voice e.g. from 200 Hz
to 1500 Hz";
- context = analysis of voice
- potential term to which it is applicable: Filter(lowF, highF)
- current term to which it is applicable: any.
- potential term's weighting coefficient attribution procedure:
- if lowF (of signal) is close to 200 HZ, potential term's weighting coefficient is
correspondingly high (e.g. 9 for 200 Hz, 8 for 300 Hz, etc.);
- if highF (of signal) is close to 1500, potential term's weighting coefficient is correspondingly
high (e.g. 9 for 1500 Hz, 8 for 1400 Hz, etc.).
[0125] A further class of heuristics, known as "reference base sensitive heuristics" takes
into account the global nature of the signals in the learning database 10. The latter
is expressed by a quantity referred to as "global reference indicator"
[0126] These heuristics therefore additionally have this global reference indicator as their
parameter. The latter can also be for instance a set of descriptors taken out from
that reference database.
[0127] They enable to select functions in dependence of the nature of the reference signals.
[0128] An example a of reference base sensitive heuristic is as follows:
HEURISTIC465;
- form HEURISTIC465 (current term, potential term, global reference indicator):
- statement of purpose: "indicate that it is particularly useful to use FFTs when the
reference database signals overall have a complex spectrum".
- potential term's weighting coefficient attribution procedure:
- if current term does not contain other FFT type terms,
- AND if potential term is an FFT,
- AND if the reference database signals have (for the most part) a complex spectrum,
with spectral characteristics SC1, SC2, ..
[0129] THEN: potential term's weighting coefficient = 9.
Caching technique.
[0130] The iterative loops used by the system 2 involve a considerable amount of processing,
especially for the steps of extracting a value Dij of a compound function CFi for
a signal data Sj. In order to maximise the efficiency of that task, the system advantageously
uses the prior results cache 16 as a source of precalculated results that save having
to repeat calculations that have previously been performed.
[0131] The corresponding caching technique involves analysing a compound function under
execution in terms of its tree structure, and thus involves both the symbolic, object
representation of the function and its exploitation as an operator.
[0132] Figure 11 is an example illustrating how the caching technique is implemented. At
a time t1, the system 2 is required to calculate the expression MAX*FFT*LPFILTER(F=600Hz)*(Si)
(F=cut-off frequency) that appears at a branch Brp of a given compound function CFu(Si).
[0133] Assuming that the prior results cache 24 is initially empty at that stage, the main
processor 22 proceeds in a stepwise manner on the successive elementary functions.
Thus, it calculates LPF(S), F=600Hz at a first step i) and stores the result as R1,
then calculates FFT*R1 at a second step ii) and stores the result as R2, and finally
calculates MAX*R2, which yields the value for the term of branch Br1.
[0134] The above intermediate and final values R1, R2 and R3 are sent to prior results cache
24 together with an indication of the parts of branch Br1 that generated them. Thus,
the cache records that LPF(Si), F=600Hz = R1, FFT*LPFILTER(F=600Hz)*(Si) = R2, and
MAX*FFT*LPFILTER(F=600Hz)*(Si) = R3 in a two-way correspondence table. Note that results
are stored in the cache 24 for an operation on a specific set of data contained in
the signal data Si. The set in question can correspond to a predetermined time sequence
of the associated audio file, for instance corresponding to one sampling event.
[0135] At a later time t2, the main processor 22 is required to calculate the value of a
branch Brq belonging to another function CFv(S). In the example, the branch Brq corresponds
to the term AVE* FFT*LPFILTER(F=600Hz)*(Si).
[0136] The cache 24 now no longer being empty, the main processor 22 proceeds to determine
first whether at least one function of that branch has already been calculated and
stored in the cache 24. To this end, it performs a scan routine on branch Brq by determining
whether the first function to be calculated, i.e. LPFILTER(F=600Hz)*(Si) is indexed
in the cache 24. The answer being yes, it determines whether the first and second
functions together, i.e. FFT*LPFILTER(F=600Hz)*(Si) are indexed in the cache. The
answer being again yes, it determines whether the first, second and third functions
together, i.e. AVE*FFT*LPFILTER(F=600Hz)*(Si) are indexed in the cache. The answer
this time being no, it is thereby informed that the most useful result in the cache
is R2= FFT*LPFILTER(F=600Hz)*(Si). Accordingly the main processor 22 rewrites the
contents of branch Brj as AVE(R2) and calculates that value. The result of that calculation
R4, indexed to the function AVE(R2), or equivalently to the term AVE* FFT*LPFILTER(F=600Hz)*(Si),
is sent to the cache 24 so that it need not be calculated in whole at a later stage.
[0137] The cache 24 is thus enriched with new results every time a new function or term
is encountered and calculated. The caching technique becomes increasingly useful cache
contents grow in size, and contributes remarkably to the execution speed of the system
2.
[0138] In practice, the number of entries in the prior results cache 24 can become too large
for an efficient use of allowable memory space and search. There is therefore provided
a monitoring algorithm which regularly checks the usefulness of each result stored
in the cache 24 according to a determined criterion and deletes those found not to
useful. In the example, the criterion for keeping a result Ri in the in the cache
24 is a function which takes into account: i) the calculation time to produce Ri,
ii) the frequency of use of Ri, and iii) the size (in bytes) of Ri. The last condition
can be disregarded if available memory space is not an issue, or if it is managed
separately by the computer.
[0139] After a given number of cycles or a given execution time according to a chose criterion,
the system 2 produces as its user data output a descriptor extraction (DE) function
4 (cf. figure 1). The latter is the member of the latest generation population Pf
of compound functions CF(f) that has been found to have the best fit for the descriptor
De. The user output can produce more than one member of that population, for instance
the b best fit functions CF(f), where b is an arbitrary integer, or those compound
functions that exhibit a fit better than a given threshold.
[0140] The criterion for ending the loop back to creating a new population of functions
is arbitrary, an ending criterion being for example one or a combination of: i) execution
time, ii) quality of results in terms of the functions' fitness, iii) number of generations
of functions (loops executed), etc.
[0141] Preferably, before an composite function is finally outputted as a DE function for
future exploitation, it is validated against signals of other music titles taken from
the validation database 18. As these signals are not used to influence the construction
of the DE functions 4, they serve as a neutral reference on which to check their effectiveness.
The checking procedure involves determining the degree of fit between on the one hand
a descriptor value obtained by making a DE function operate on a signal Sv of the
validation database and on the other the grounded truth descriptor value associated
to the music title of that signal Sv. An overall correlation or validation value is
generated by statistical analysis over a given number of entries of the validation
database 18. If the validation value is above an acceptable threshold, the DE function
4 is validated and thus considered to be exploitable. In the opposite case, the DE
function is rejected and another DE function is considered.
[0142] Figure 12 is a flowchart illustrating some steps performed by the system 2 of figure
2 in the course of producing a descriptor extraction function DE 4, these being:
- inputting user input data to constitute the learning database 10 (step S2), whereby
the database comprises the set of reference signals S1-Sm in association with their
global characteristic values Dgt1-Dgtm pre-attributed,
- preparing a population P1 of functions CF1-CFr each composed of at least one elementary
function (EF) (step S4),
- modifying functions of the current population using programmed means 22, 25 that handle
their elementary functions as symbolic objects (step S6),
- operating each function of the population on at least one reference signal using means
22, 27 that exploit the elementary functions as executable operators, to obtain a
calculated value for each compound function of the population in respect of the reference
signal (step S8),
- for each function of the population, determining the degree of matching between its
calculated value and the pre-attributed value Dgti for the signal from which that
value has been calculated (step S10),
- selecting functions of the population producing the best matches to form a new population
P2 of functions (step S12),
- if an ending criterion is not satisfied, returning to step S6, where the new population
becomes the current population (step S 14), and
- if an ending criterion is satisfied, outputting at least one function of the current
new population as a general function (4) of the user output (step S16).
[0143] Heuristics and/or rules can be entered, edited, modified through the user interface
unit 26 e.g. by manual input (keyboard) or by download, thereby making the system
fully adaptive and configurable.
[0144] Typically, the system generates several hundred compound functions over a twelve-hour
period. The learning database preferable comprises at least several hundred titles,
and preferably several thousand. The handling of such large databases is simplified
by the use of the above caching technique and heuristics. Parallel processing, where
a same function is calculated on several titles simultaneously using respective processors
over a network can also be envisaged.
[0145] The size of the compound functions is typically of the order of ten elementary functions.
[0146] The system is remarkable in that it does not need to be informed of the descriptor
De for which it must a find a suitable DE function. In other words, all that is necessary
is to provide examples of just the descriptor values Dgti associated to music titles
Ti and their signal data Si. This makes the system 2 completely open as regards descriptors,
and amenable to generating suitable DE functions for different descriptors without
requiring any initial formal training or programming specific to a given descriptor.
[0147] In the embodiment, the system is connected to a network, such as Internet or a LAN,
in order to facilitate the acquisition of music titles through a download centre 36.
The networking also makes it possible to share and exchange elementary functions,
compound functions, heuristics, rules and DE functions found to be interesting, as
well as results data for the prior results cache 24, allowing parallel processing,
etc. In this way, an interactive community of searchers can be fostered and allow
the a rapid spread of new developments.
[0148] The heuristics and/or rules can be entered / edited / parameterised through the user
interface unit 26; they can also be generated / adapted internally by the system,
e.g. by processing techniques based on analysing compound functions that produce the
best fits and determining common features thereof expressible as rules and/or heuristics.
[0149] Figure 12 is an example of different DE functions and their fitness produced automatically
by the system for evaluating the presence of voice in music title.
[0150] Figure 13 is an example of different compositions of DE functions in terms of elementary
functions, and their fitness produced automatically by the system to evaluate the
global energy of music titles.
[0151] The method and data implemented by the system can be presented as executable code
forming a software product stored on a computer-readable recording medium, e.g. a
CD-ROM or downloadable from a source, the code executing all or part of operations
presented.
[0152] From the foregoing, it will be appreciated that the above-described system is remarkable
by virtue of many characteristics, inter alia :
- its genericity: the system is independent of a given descriptor, and is able to infer
an extractor (DE function) for arbitrary problems;
- its heuristics: the system contains many built-in heuristics that guide the search,
and reduce the search space. The originality here is that the system encodes heuristics
specific to signal processing, and provides a way to evaluate the fitness of a given
function by testing it against a real database of music titles;
- caching, which greatly reduces the workload on the main processor 22 and accelerates
calculation considerably;
- rewriting, which provides the groundwork for ensuring that functions shall be calculated
in their most rational form;
- implementation: the aim is calculate functions on an automated basis, rather than
manually. In the respect, the embodiment can be likened to an expert system in artificial
intelligence, where it substitutes the role of the human specialist in signal processing.
Extracting descriptors automatically from the digital representation of an acoustic
signal in accordance with the invention allows to scale-up descriptor acquisition,
and also ensures that the descriptors obtained are objective.
[0153] The remarkable aspects of the present automated system 2 can be appreciated from
considering how the task would have to be considered in a manual approach. The starting
point is the raw data signals as seen by the specialist in signal processing. The
latter tries out various processing functions according to a empirical methodology
in the expectation that some rule shall emerge for correlating complex signal characteristics
with that descriptor. In other words, the approach is extremely heuristic in nature.
It is also largely based on trial and error.
[0154] This task of manually finding a combination of signal processing functions by signal
processing experts is time-consuming and subject to many subjective biases, errors,
etc. In most cases it would be too impractical to be considered in a real-life application.
System applications.
[0155] 1. Fully autonomous automatic descriptor extraction function generating system.
[0156] In the embodiment described above, the programmed system 2 is able to generate an
exploitable DE function 4 from scratch using just the user data input indicated with
reference to figure 1.
[0157] The DE function typically takes on the form of executable code or instructions comprehensible
to a human or machine. The contents of the DE function thereby allow processing on
the audio data signal of any given music title to extract its descriptor De, the latter
being referenced to the function.
[0158] The process of extracting in this way the descriptor De of a music title can be performed
by an apparatus which is separate from the system. The apparatus in question takes
for input the DE function (or set of DE functions) produced by the system 2 and audio
files containing signals for which a descriptor has to be generated. The output is
then the descriptor value Dx of the descriptor De for the or each corresponding music
title Tx. The DE function (or set of DE functions) produced by the system 2 is in
this case considered as a product in its own right for distribution either through
a network, or through a recordable medium (CD, memory card, etc.) in which it is stored.
2. Descriptor extraction
[0159] It will be noted that the system 2 already includes all the hardware and software
necessary to constitute an automated descriptor generating apparatus as defined in
the preceding section. In this case, the DE functions shown as user data output of
figure 1 are fed back to the system (or kept within system and stored). The system
can be switched to the descriptor extraction mode in which audio signal data corresponding
to a music file Tx to be analysed is supplied as an input and the corresponding music
descriptor value of Tx for the descriptor De is provided as the output.
3. Authoring tool for producing descriptor extraction functions.
[0160] In a variant, the system is implemented more as an authoring tool. In this implementation,
the system allows the outputted DE functions to be modified by external intervention,
generally by a human operator. The rationale here is that in some cases, while the
functions produced automatically may not be strictly optimal, they are nevertheless
highly interesting as a starting basis for optimisation, or "tweaking". The advantage
in this case resides in that the human specialist has at his disposal a descriptor
extraction function firstly which is already proven to be effective compared to a
large number of other possible functions, indicating that it possesses a sound structure,
and secondly which is proven to be amenable to fast and consistent execution. Note
that the DE function outputted by the system 2 can generally be modified by intervening
in this case too either at the level of the basic elementary function taken as a symbolic
object, e.g. by substitution, removal, or addition, or at the level of the internal
parameterisation of a basic elementary function, e.g. by changing a cut-off frequency
value in the case of the low-pass filtering elementary function.
4. Evaluation tool for externally produced descriptor extraction functions.
[0161] The aspect of the system 2 that analyses and evaluates compound functions can be
put at the disposal of external sources of candidate DE functions, so as to help designers
evaluluate their own descriptor extraction functions. The evaluation can be used to
provide an objective assessment of the "fitness" FIT of such a candidate function
with respect to the learning database 10 or validation database 18.
5. Function calculation tool for externally produced DE functions.
[0162] Similarly, the function calculation potential of the system 2, enhanced notably by
the above-described rewriting rules and the caching technique, can be put at the disposal
of outside users. The latter can then input a given complex signal processing function
(not necessarily in the context of descriptor extraction) and receive a calculated
value as an output.
Scope
[0163] While the invention has been described in the context of a system adapted to process
audio file signal data to produce descriptor extraction functions DE, it will be apparent
that the teachings of the invention are applicable to many other applications where
it is required to analyse low level characteristics of an electronic data signal (digital
or analogue) in view of extracting higher-level information relating to its contents.
For instance, the invention can be implemented for obtaining descriptor extraction
functions operative on video or image signal data, the descriptors in this case being
applicable to visual contents, such as indicating whether a scene is set at night
or daytime, the amount of action, etc. Other applications are in the fields of automatic
cataloguing of sound, scenes, objects, animals, plants, etc. through high level descriptors.
1. Method of generating a general extraction function (4) which can operate on an input
signal (Sx) to extract therefrom a predetermined global characteristic value (DVex)
expressing a feature of the information (De) conveyed by that signal,
characterised in that it comprises the steps of:
- generating automatically compound functions (CF1- CFn), each compound function being
composed of at least one of a set of elementary functions (EF1, EF2, ..), by using
means (22, 25) that handle said elementary functions as symbolic objects,
- operating said compound functions on at least one reference signal (S1-Sm) having
a pre-attributed global characteristic value (Dgt1-Dgtm) serving for evaluation, by
using means (22, 27) that process said elementary functions as executable operators,
- determining the correlation between the values (Dij) extracted by those compound
functions as a result of operating on said reference signal and the pre-attributed
global characteristic value (Dgt1-Dgtm) of said reference signal, and
- selecting said general extraction function (4) among those compound functions for
which said correlation is relatively high.
2. Method according to claim 1, wherein said compound functions are generated in successive
populations (P, P1, P2),
wherein each new population of functions takes as a basis earlier population functions
which produce a relatively high correlation.
3. Method according to claim 1 or 2, wherein it is performed by the steps of:
a) preparing at least one reference signal (S1-Sm) for which said predetermined global
characteristic value (Dgt1-Dgtm) is pre-attributed,
b) preparing a population (P1) of compound functions (CF1-CFr) each composed of at
least one elementary function (EF),
c) modifying compound functions of the current population using said means (22, 25)
that handle their elementary functions as symbolic objects,
d) operating said compound functions of said population on at least one said reference
signal using said means (22, 27) that exploit said elementary functions as executable
operators, to obtain a calculated value for each compound function of the population
in respect of said reference signal,
e) for at least some compound functions of the population, determining the degree
of matching between its calculated value and the pre-attributed value (Dgti) for the
signal from which that value has been calculated,
f) selecting compound functions of said population producing the best matches to form
a new population (P2) of functions,
g) if an ending criterion is not satisfied, returning to step c), where said new population
becomes the current population,
h) if an ending criterion is satisfied, outputting at least one compound function
of the current new population as a said general function (4).
4. Method according to any one of claims 1 to 3, wherein said compound functions are
produced by random choices guided by rules and/or heuristics.
5. Method according to claim 4, wherein said rules and/or heuristics comprise at least
one rule which forbids, from a random draw for selecting an elementary function to
be associated with a part of a compound function under construction, an elementary
function that would be formally inappropriate for that part.
6. Method according to claim 4 or 5, wherein said rules and/or heuristics comprise at
least one heuristic which favours, in a random draw for selecting an elementary function
to be associated with a part of a compound function under construction, an elementary
function which is considered to produce potentially useful technical effects in association
with that part, and/or which discourages from said random draw an elementary function
considered to produce technical effects of little or no use in association with that
part.
7. Method according to any one of claims 4 to 6, wherein said rules and/or heuristics
comprise at least one heuristic which ensures that a said compound function (CF) comprises
only elementary functions (EF) that each produce a meaningful technical effect in
their context.
8. Method according to any one of claims 4 to 7, wherein said rules and/or heuristics
comprise at least one heuristic which takes into account at least one overall characteristic
of said reference signals.
9. Method according to any one of claim 2 to 8, wherein a new population (P1, P2, ..)
of functions is produced using genetic programming techniques.
10. Method according to claim 9, wherein said genetic programming techniques comprise
at least one of following:
- crossover,
- mutation,
- cloning.
11. Method according to claim 10, wherein a crossover operation and/or a mutation operation
is guided by at least one heuristic of any one of claims 4 to 8.
12. Method according to any one of claims 1 to 10, wherein said means (22, 25) that handle
said elementary functions as symbolic objects manage said functions (CF) in accordance
with a tree structure comprising nodes and connecting branches, in which each node
corresponds to a symbolic representation of a constituent unit function (EF), said
tree having a topography in accordance with the structure of said function.
13. Method according to any one of claims 1 to 12, further comprising a step of submitting
a compound function (CF) to at least one rewriting rule executed by processing means
(15, 22) to ensure that said compound function is cast in its most rational form or
most efficient form in respect of execution efficiency.
14. Method according to any one of claims 1 to 13, wherein it uses a caching technique
for evaluating a function, in which results (R1, R2, ...) of previously calculated
parts of functions are stored (24) in correspondence with those parts, and a function
currently under calculation is initially analysed to determine whether at least a
part of said function can be replaced by a corresponding stored result, said part
being replaced by its corresponding result if such is the case.
15. Method according to claim 14, comprising the steps of checking the usefulness of results
stored (24) according to a determined criterion, and of erasing those found not to
be useful, said criterion for keeping a result Ri being a function which takes into
account: i) the calculation time to produce Ri, ii) the frequency of use of Ri and,
optionally, iii) the size (in bytes) of Ri.
16. Method according to any one of claims 1 to 15, wherein said elementary functions (EF)
comprise signal processing operators and mathematical operators.
17. Method according to any one of claims 1 to 16, further comprising a step of validating
a general function (CF) against at least one reference signal having a known value
for said general characteristic, and which was not used to serve as said reference.
18. Method according to any one of claims 1 to 17, wherein said signal (S) expresses an
audio content, and said global characteristic is a descriptor (De) of the audio content.
19. Method according to claim 18, wherein said audio content is in the form of an audio
file, said signal (S) being the signal data of said file.
20. Method according to claim 18 or 19, wherein said descriptor comprises at least one
among:
- a global energy indication,
- a sung or instrumental audio content,
- an evaluation of the danceability,
- an acoustic or electric sounding audio content,
- presence or absence of a solo instrument, e.g. guitar or saxophone solo.
21. Method of extracting a global characteristic value (DVex) expressing a feature of
the information (De) conveyed by a signal (Sx), characterised in that it comprises calculating for said signal (Sx) the value of a general function (4)
produced specifically by the method of any one of claims 1 to 20 for that global characteristic.
22. Apparatus (2) for generating a general function (4) which can operate on an input
signal (Sx) to extract therefrom a predetermined global characteristic value (DVex)
expressing a feature of the information (De) conveyed by that signal,
characterised in that it comprises:
- means (22, 25) for generating automatically compound functions (CF1-CFn), each compound
function being composed of at least one of a set of elementary functions (EF1, EF2,
..), said means (22, 25) handling said elementary functions as symbolic objects,
- means (22, 27) for operating said compound functions on at least one reference signal
(S1-Sm) having a pre-attributed global characteristic value (Dgt1-Dgtm) serving for
evaluation, said means (22, 27) processing said elementary functions as executable
operators,
- means (22) for determining the correlation between the values (Dij) extracted by
those compound functions as a result of operating on said reference signal and the
pre-attributed global characteristic value (Dgt1-Dgtm) of said reference signal, and
- means (22) for selecting said general extraction function (4) among those compound
functions for which said correlation is relatively high.
23. Apparatus according to claim 22, configured to execute the method according to any
one of claims 1 to 21.
24. Use of the apparatus according to claim 22 or 23 as a fully autonomous automatic descriptor
extraction function generating system.
25. Use of the apparatus according to claim 22 or 23 as a descriptor extraction means.
26. Use of the apparatus according claim 22 or 23 as an authoring tool for producing descriptor
extraction functions (4).
27. Use of the apparatus according to claim 22 or 23 as an evaluation tool for externally
produced descriptor extraction functions.
28. A general function (4) in a form exploitable by an electronic machine, produced specifically
by the apparatus according to claim 22 or 23.
29. A software product containing executable code which, when loaded in a data processing
apparatus, enables the latter to perform the method of any one of claims 1 to 21.