FIELD OF THE INVENTION
[0001] The present invention belongs to the body accidental fall monitoring field, and in
particular relates to a body fall smart control system and a method therefor.
BACKGROUND OF THE INVENTION
[0002] With the rapid development of society, people have many security risks in their daily
lives, for example, a stampede accident in a public place, a fall accident on an elevator,
an old person falling alone at home but no one knows, etc.. These fall accidents are
likely to cause injuries, and even worse, loss of valuable lives and so on.
[0003] At present, in the field of monitoring falls at home and abroad for the elderly,
patients and personnel engaged in dangerous work, most monitoring devices use wearable
portable sensors, such as acceleration and angular velocity sensors, or simpler, help
call buttons. However, most people are often reluctant to wear various sensor devices.
After a person falls, the body cannot move or the brain loses consciousness. In this
case, the help call button also fails. Another way to monitor falls is to use traditional
camera monitoring to quickly identify a fall. However, the traditional camera is easy
to cause misjudgment because it captures single data, and cannot identify people's
movements such as bending over. Besides, because the sensor technology used is backward,
the accuracy of determination is low, and the error rate is higher in an environment
that is dim, at night or hot, etc..
[0004] Chinese patent document
CN 104966380 discloses an alarm system capable of monitoring an accidental body fall, which comprises
a background master unit, a camera unit, a sensing unit and an alarm unit; the camera
unit and the sensing unit are responsible for capturing a body video image and a vibration
signal; the background master unit is configured to perform framing processing on
the body video image to determine whether a fall has occurred and whether the vibration
signal exceeds a preset threshold; when it is determined that a fall has occurred
and the vibration signal exceeds the preset threshold, an alarm signal is generated
to control the alarm unit to sound a responding alarm; through the image identification
technology, a fall is determined according to the height of center of gravity, the
tilt angle and the effective area change of a person. This patent has the following
disadvantages:
- 1. The accuracy of determining a fall according to the height of center of gravity,
the tilt angle and the effective area change of a person is low, and it can be improved
by the assistance of a high-sensitivity vibration sensor.
- 2. When it is determined that a fall has occurred, only a voice alarm can be sounded,
and the external device cannot be controlled, with the purpose of rescue basically
unachievable.
SUMMARY OF THE INVENTION
[0005] In view of the deficiencies of the prior art, an object of the present invention
is as follows: The present invention provides a body fall smart control system and
a method therefor, i.e., tracking a moving target via a camera and audio signal capturing
data, establishing a 2D or 3D model, comparing and analyzing the speed, angle, associated
help voice, etc. of a falling body to determine whether a fall has occurred, and sounding
an alarm and sending a signal for manual braking or automatic braking etc. and controlling
an action of a related device if the comparison is successful. The identification
speed is fast, the accuracy is high, and the injury caused by a fall is minimized.
[0006] The present invention adopts the following technical solution:
A body fall smart control system is provided, comprising at least one image capturing
module used for capturing a video image, and an image processing module connected
to the image capturing module, characterized in that: the image processing module
is used for performing body pattern identification on the captured video image, establishing
a 2D or 3D model of the identified body pattern, tracking whether a signal change
speed and/or angle of the modelled body pattern reaches a set threshold value to determine
whether a fall has occurred, and controlling an alarm module to sound an alarm if
a fall has occurred.
[0007] The video image processing of the image processing module comprises the following
steps:
- (1) detection of moving target: the video image is processed into an image sequence,
and it is determined whether a moving target appears in each frame of the image sequence,
if so, the moving target is positioned;
- (2) tracking of moving target: a correspondence relationship is established between
body areas in consecutive frames;
- (3) feature extraction method: a contour feature point of the body is extracted to
form a contour state of a certain regular shape; and
- (4) behavior identification: the contour state obtained in the step (3) is subjected
to body pattern identification in a space-time zone, a 2D or 3D model is established
for the identified body pattern, and a signal change speed of the modelled body pattern
is tracked to determine whether the body is in a normal state or an abnormal state;
if the body is in an abnormal state, the change speed and/or angle of the contour
state in the consecutive frames is analyzed, and it is determined whether the change
speed and/or angle reaches the set threshold, if so, a fall is determined to have
occurred.
[0008] Preferably, image pre-processing is also included prior to the moving object detection,
and comprises the following steps: first median filtering is performed on an image
to remove image noise; then a boundary contrast adaptive histogram equalization method
is used to enhance the image; an open operation is used to remove image burrs that
stick to the body; a Prewitt edge detection method is used to extract a contour of
the image; and a comprehensive method is used to determine a grayscale threshold of
the image, and the image is binarized.
[0009] Preferably, the contour state has a rectangular shape.
[0010] Preferably, an audio capturing module is also included for capturing an audio signal,
and the alarm module sounds an alarm when the audio signal reaches a set threshold.
[0011] Preferably, the image processing module is further connected to an execution module
that is connected to an external device; when it is determined that a fall has occurred,
the execution module is driven to control the external device to stop.
[0012] The present invention also discloses a body fall smart control method, which is characterized
by the following steps:
S01: at least one image capturing module is used to capture a video image; and
S02: performing body pattern identification on the captured video image, establishing
a 2D or 3D model of the identified body pattern, tracking whether a signal change
speed and/or angle of the modelled body pattern reaches a set threshold value to determine
whether a fall has occurred, and controlling an alarm module to sound an alarm if
a fall has occurred.
[0013] Preferably, the step (2) comprises the following steps:
S11-detection of moving target: the video image is processed into an image sequence,
and it is determined whether a moving target appears in each frame of the image sequence,
if so, the moving target is positioned;
S12-tracking of moving target: a correspondence relationship is established between
body areas in consecutive frames;
S13-feature extraction method: a contour feature point of the body is extracted to
form a contour state of a certain regular shape; and
S14-behavior recognition: the contour state obtained in the step S13 is subjected
to body pattern identification in a space-time zone, a 2D or 3D model is established
for the identified body pattern, and a signal change speed of the modelled body pattern
is tracked to determine whether the body is in a normal state or an abnormal state;
if the body is in an abnormal state, the change speed and/or angle of the contour
state in the consecutive frames is analyzed, and it is determined whether the change
speed and/or angle reaches the set threshold, if so, a fall is determined to have
occurred.
[0014] Preferably, image pre-processing is also included prior to the moving object detection,
and comprises the following steps: first median filtering is performed on an image
to remove image noise; then a boundary contrast adaptive histogram equalization method
is used to enhance the image; an open operation is used to remove image burrs that
stick to the body; a Prewitt edge detection method is used to extract a contour of
the image; and a comprehensive method is used to determine a grayscale threshold of
the image, and the image is binarized.
[0015] The advantages of the present invention over the prior art are as follows:
- 1. Tracking a moving target via a camera and audio signal capturing data, establishing
a 2D or 3D model, comparing and analyzing the speed, angle, associated help voice,
etc. of a falling body to determine whether a fall has occurred, and sounding an alarm
and sending a signal for manual braking or automatic braking etc. and controlling
an action of a related device if the comparison is successful. The identification
speed is fast, the accuracy is high, and the injury caused by a fall is minimized.
- 2. The present invention has wide application range and high compatibility, and can
be used alone or in a place such as a shopping mall or a public place. When a person
falls on an elevator, he/she can be found at the first time, and appropriate braking
measures can be taken to avoid casualties.
BRIEF DESCRIPTION OF THE DRAWINGS
[0016] The present invention will be further described below with reference to drawings
and examples:
Fig. 1 is a schematic block diagram of a body fall smart control system according
to the present invention; and
Fig. 2 is a schematic diagram of body mode analysis of the body fall smart control
system of the present invention.
[0017] Wherein: 1. a camera; 3. an image processing module; 4. an alarm module; 5. an execution
module; 6. an external device; 7. a communication module; 31. a receiving module;
and 32. a data analysis module.
DETAILED DESCRIPTION OF THE EMBODIMENTS
[0018] In order to make the objects, technical solutions and advantages of the present invention
clearer, the present invention will be further described below in detail with reference
to the specific embodiments and the accompanying drawings. It is to be understood
that the description is only exemplary, not intended to limit the scope of the present
invention. In addition, descriptions of well-known structures and techniques are omitted
in the following description so as to avoid unnecessarily obscuring the concept of
the present invention.
Example:
[0019] As shown in Fig. 1, a body fall smart control system comprises a plurality of image
capturing modules and audio capturing modules, wherein the image capturing module
can be a camera 1 and is used to capture a video image, and the audio capturing module
is used to capture an audio signal; the image capturing module and the audio capturing
module are connected to an image processing module 3, which comprises a receiving
module 31 configured to receive the audio or image signal and a data analysis module
32 configured to process and analyze the audio or image signal; if a fall has occurred,
an alarm module 4, to which the data analysis module 32 is also connected, is controlled
to sound a voice or illumination alarm.
[0020] In order to increase the visibility and improve the accuracy of extracting the contour
feature points of the body, the present system can also add a structured light emitting
module, such as an infrared light emitting module, so that the infrared light illuminates
the body to form a body contour reflected light, and then the image capturing module
captures the video image.
[0021] The video image processing of the data analysis module 32 comprises the following
steps:
- (1) detection of moving target: the video image is processed into an image sequence,
and it is determined whether a moving target appears in each frame of the image sequence,
if so, the moving target is positioned;
- (2) tracking of moving target: a correspondence relationship is established between
body areas in consecutive frames;
- (3) feature extraction method: a contour feature point of the body is extracted to
form a contour state of a certain regular shape; the contour state can have a rectangular,
square, linear or other shape; this example is described by taking a rectangular shape
as an example, as shown in Fig. 2; and
- (4) behavior identification: the contour state obtained in the step (3) is subjected
to body pattern identification in a space-time zone, a 2D or 3D model is established
for the identified body pattern, and a signal change speed of the modelled body pattern
is tracked to determine whether the body is in a normal state or an abnormal state.
[0022] When the body is in the normal state, no further processing is performed. If the
body is in the abnormal state, the change speed and/or angle of the contour state
in the consecutive frames is analyzed; as shown in Fig. 2, the angular velocity, linear
velocity or acceleration from the state A to the B state in the rectangular contour
state can be calculated, and the angle ACB from AC to BC is calculated; and it is
determined whether the change speed and/or angle reaches a set threshold, if so, it
is determined that a fall has occurred. The set threshold may be one of angular velocity,
linear velocity, acceleration and fall angle, or a combination thereof, such as setting
a fall angle threshold ACB ≥ 40°, and a fall change acceleration threshold a ≥ 0.5
m/s2, and if the set thresholds are reached, it is determined that a fall has occurred.
[0023] The data analysis module 32 processes the audio signal, and may sound a voice alarm
when a help signal is received or the volume reaches a certain value.
[0024] Further, in order to improve the image processing effect and the determination accuracy,
the image may be pre-processed before the moving target is detected. The image pre-processing
comprises the following steps: First median filtering is performed on an image to
remove image noise; then a boundary contrast adaptive histogram equalization method
is used to enhance the image; an open operation is used to remove image burrs that
stick to the body; a Prewitt edge detection method is used to extract a contour of
the image; and a comprehensive method is used to determine a grayscale threshold of
the image, and the image is binarized.
[0025] The data analysis module 32 can also be connected to an execution module 5, which
is connected to an external device 6 (e.g., an escalator, etc.). When it is determined
that a fall has occurred, the execution module 5 is driven to control the external
device 6 to stop. The corresponding braking measures can be taken at the first time.
[0026] The data analysis module 32 can also be connected to a communication module 7, which
can communicate with an external device (such as a mobile phone) and send a help signal
at the first time.
[0027] The present invention is simple in modeling and fast in identification, and only
needs to extract a plurality of border points of the main shape of the body to form
a model comparison, which is fast and efficient.
[0028] The above embodiments of the present invention are merely used to illustratively
describe or explain the principles of the present invention, and do not constitute
a limitation of the present invention. Therefore, any modifications, equivalent substitutions,
improvements, etc., which are made without departing from the spirit and scope of
the present invention, are intended to be included within the scope thereof. Besides,
the appended claims of the present invention are intended to cover all the changes
and modifications falling within the scope and boundary, or the equivalents thereof,
of the appended claims.
1. A body fall smart control system, comprising at least one image capturing module used
for capturing a video image, and an image processing module connected to the image
capturing module, wherein the image processing module is used for performing body
pattern identification on the captured video image, establishing a 2D or 3D model
of the identified body pattern, tracking whether a signal change speed and/or angle
of the modelled body pattern reaches a set threshold value to determine whether a
fall has occurred, and controlling an alarm module to sound an alarm if a fall has
occurred.
2. The body fall smart control system according to claim 1, wherein the image processing
module comprises the following steps for video image processing:
(1) detection of moving target: the video image is processed into an image sequence,
and it is determined whether a moving target appears in each frame of the image sequence,
if so, the moving target is positioned;
(2) tracking of moving target: a correspondence relationship is established between
body areas in consecutive frames;
(3) feature extraction method: a contour feature point of the body is extracted to
form a contour state of a certain regular shape; and
(4) behavior identification: the contour state obtained in the step (3) is subjected
to body pattern identification and modelling in a space-time zone, and a signal change
speed of the modelled body pattern is tracked to determine whether the body is in
a normal state or an abnormal state; if the body is in an abnormal state, the change
speed and/or angle of the contour state in the consecutive frames is analyzed, and
it is determined whether the change speed and/or angle reaches the set threshold,
if so, a fall is determined to have occurred.
3. The body fall smart control system according to claim 2, wherein image pre-processing
is also included prior to the moving object detection, and comprises the following
steps: first median filtering is performed on an image to remove image noise; then
a boundary contrast adaptive histogram equalization method is used to enhance the
image; an open operation is used to remove image burrs that stick to the body; a Prewitt
edge detection method is used to extract a contour of the image; and a comprehensive
method is used to determine a grayscale threshold of the image, and the image is binarized.
4. The body fall smart control system according to claim 2, wherein the contour state
has a rectangular shape.
5. The body fall smart control system according to any of claims 1-4, wherein an audio
capturing module is also included for capturing an audio signal, and the alarm module
sounds an alarm when the audio signal reaches a set threshold.
6. The body fall smart control system according to claim 5, wherein the image processing
module is further connected to an execution module that is connected to an external
device; when it is determined that a fall has occurred, the execution module is driven
to control the external device to stop.
7. The body fall smart control system according to claim 5, wherein the image processing
module is also connected to a communication module for communicating with the external
device.
8. A body fall smart control method, wherein it comprises the following steps:
S01: at least one image capturing module is used to capture a video image; and
S02: performing body pattern identification on the captured video image, establishing
a 2D or 3D model of the identified body pattern, tracking whether a signal change
speed and/or angle of the modelled body pattern reaches a set threshold value to determine
whether a fall has occurred, and controlling an alarm module to sound an alarm if
a fall has occurred.
9. The body fall smart control method according to claim 8, wherein the step (2) comprises
the following steps:
S11-detection of moving target: the video image is processed into an image sequence,
and it is determined whether a moving target appears in each frame of the image sequence,
if so, the moving target is positioned;
S12-tracking of moving target: a correspondence relationship is established between
body areas in consecutive frames;
S13-feature extraction method: a contour feature point of the body is extracted to
form a contour state of a certain regular shape; and
S14-behavior recognition: the contour state obtained in the step S13 is subjected
to body pattern identification and modelling in a space-time zone, and a signal change
speed of the modelled body pattern is tracked to determine whether the body is in
a normal state or an abnormal state; if the body is in an abnormal state, the change
speed and/or angle of the contour state in the consecutive frames is analyzed, and
it is determined whether the change speed and/or angle reaches the set threshold,
if so, a fall is determined to have occurred.
10. The body fall smart control method according to claim 9, wherein image pre-processing
is also included prior to the moving object detection, and comprises the following
steps: first median filtering is performed on an image to remove image noise; then
a boundary contrast adaptive histogram equalization method is used to enhance the
image; an open operation is used to remove image burrs that stick to the body; a Prewitt
edge detection method is used to extract a contour of the image; and a comprehensive
method is used to determine a grayscale threshold of the image, and the image is binarized.