This application is based upon and claims priority under 35 U.S.C. 119 from Taiwan Patent Application No. 109130299 filed on Sep. 3, 2020, which is hereby specifically incorporated herein by this reference thereto.
The present invention is related to an optical image physiological monitoring system, and more particularly to an optical image physiological monitoring system with radar detection assistance.
At present, many image monitoring devices or systems have come out to provide remote users real images at local. With the advancement of image processing technology, the image monitoring devices or systems can identify any human body shown in the images and further analyzes the human body's motion. Therefore, the remote user does not necessarily monitor the images from the image monitoring devices or systems to watch people's activities at local.
China Patent Publication No. 110192862 proposes a contactless breathing detection device. The contactless breathing detection device uses a radar detector to detects a human's breath. However, a radius of a detection area of the radar detector is about 5 meters so that the radar detector roughly detects whether any moving subject, such as a human body, is shown in the detection area. Therefore, the breathing detection device is used to determine whether anyone enter or leave a room when the breathing detection device is placed in the room. The breathing detection device also uses the radar detector to detect the human's breath, but many signal-processing technologies are required to extract real radar signals for the human's breath from lots of the reflected radar signals.
To overcome the shortcomings, the present invention provides an optical image physiological monitoring system with radar detection assistance to mitigate or to obviate the aforementioned problems.
An objective of the present invention is to provide an optical image physiological monitoring system with radar detection assistance.
To achieve the objective as mentioned above, the optical image physiological monitoring system with radar detection assistance has:
a casing;
a visible-light image sensor mounted on the casing and outputting a plurality of visible-light images of a body;
a radar detector movably mounted on the casing and outputting a plurality of distance values; and
a processing unit mounted in the casing and electrically connected to the visible-light image sensor and the radar detector to receive the visible-light images and the distance values, wherein the processing unit identifies a chest feature of the body from each visible-light image and a position of the chest feature through a deep-learning module; the processing unit controls the radar detector to move relatively to the casing according to the position of the chest feature of the body; and the processing unit has a physiological status determining procedure having:
With the foregoing description, the visible-light-image physiological monitoring system of the present invention uses the deep-learning module to identify the position of the body's chest feature, so that the processor can control the radar detector to aim the chest of the body. When people breathe, his or her chest alternately expands and shrinks. Since the radar detector transmits the radar signals to the chest of the body and receives the reflected radar signals, the radar detector can calculate different distance values corresponding expanding chest and shrinking chest. Therefore, the processor determines the body's breathing frequency by analyzing a variation of the distance values. Since the processor receives the visible-light images and the distance values simultaneously, the processor determines the body's motion by the deep-learning module and further filters the distance values received under the body with a larger motion to determine the current breathing frequency accurately.
Other objectives, advantages and novel features of the invention will become more apparent from the following detailed description when taken in conjunction with the accompanying drawings.
With multiple embodiments and drawings thereof, the features of the present invention are described in detail as follows.
With reference to
In the preferred embodiment, as shown in
The visible-light image sensor 20 is mounted on the casing 10 and outputs a visible-light image F1, as shown in
The radar detector 30 is movably mounted on the casing 10 and outputs a distance value. As shown in
The first communication module 40 is mounted in the casing 10. In one embodiment, the first communication module 40 matches a wireless communication device 72, such as WIFI or Bluetooth and so on.
The processing unit 50 is mounted in the casing 10 and electrically connected to the visible-light image sensor 20, the radar detector 30 and the audio receiver 60 to receive the visible-light image F1, the distance value and the audio signal. In one embodiment, the processing unit 50 may be an AI processor having a built-in deep-learning module 51. The deep-learning module 51 identifies a chest feature from the visible-light image and further determines a position of the chest feature. The processing unit 50 is electrically connected to the first communication module 40 and transmits a physiological monitoring alarm to the wireless communication device 72 through the first communication module 40. In one embodiment, as shown in
The learning mode generates a normal breathing frequency. With reference to
In the step 510, with reference to
In the step 12, the processing unit 50 adjusts the position of the radar detector 30 by driving the motor module 31 according the position of the chest feature F11 and the radar detector 30 aims the chest 80 of the body to be monitored. In one embodiment, the motor module 31 uses a close-loop-control x-axis server motor system and a close-loop-control y-axis server motor system. The position of the motor module 31 obtains a feedback signal with a rotating angle of the x-axis server motor and a feedback signal with a rotating angle of the y-axis server motor and then determines a coordinate of the radar detector 30 according to the two feedback signals. The coordinates of the radar detector 30 are further corrected by coordinates of a view field of the visible-light image sensor 20, so that a relationship between a detecting range of the radar detector 30 and a shooting range of the visible-light image sensor 20 is obtained by the processing unit 50. Therefore, the processing unit 50 can control the radar detector 30 to accurately aim the chest of the body to be monitored according to the position of the chest feature F11 determined in the step S11.
In the step S13, the processing unit 50 controls the radar detector 30 to output the radar signal. With reference to
In the step S14, the visible-light image from the visible-light image sensor 20 and the distance value from the radar detector 30 are obtained simultaneously. The deep-learning module 51 determines the positions of the chest feature F11 in a preset period, as shown in
The physiological status monitoring mode is executed after the learning mode is finished. With reference to
In the step S20, as shown in
In the step S21, as shown in
In the step S22, according to the position of the chest feature, the position of the radar detector 30 is adjusted to aim the chest of the body to be monitored.
In the step S23, as shown in
In the step S24, as shown in
In the step S25, the processing unit 50 determines whether the current breathing frequency matches the normal breathing frequency. If yes, the body's breath is normal and goes to the step S20. If not, in step S26, the processing unit 50 outputs the physiological monitoring alarm, including abnormal breath.
In addition, if the abnormal breath is determined in the step S25, the processing unit 50 calculates the decibel value of the received audio signal from the audio receiver 60 and determines whether the decibel value exceeds a preset decibel value. In the baby monitor application, the body to be monitored is the baby's body, and the baby may have a fever and is crying or coughing if the decibel value exceeds the preset decibel value. The processing unit 50 transmits a coughing alarm or crying alarm.
Based on the foregoing description, the visible-light-image physiological monitoring system of the present invention uses the deep-learning module to identify the position of the chest feature of the body, so the processor can control the radar detector to aim the chest of the body. When people breathe, his or her chest alternately expands and shrinks. Since the radar detector transmits the radar signals to the chest of the body and receives the reflected radar signals, the radar detector can calculate different distance values corresponding expanding chest and shrinking chest. Therefore, the processor determines the breathing frequency of the body by analyzing a variation of the distance values. Since the processor receives the visible-light images and the distance values simultaneously, the processor determines body's motion by the deep-learning module and further filters the distance values received under the body with a larger motion to determine the current breathing frequency accurately.
Even though numerous characteristics and advantages of the present invention have been set forth in the foregoing description, together with the details of the structure and features of the invention, the disclosure is illustrative only. Changes may be made in the details, especially in matters of shape, size, and arrangement of parts within the principles of the invention to the full extent indicated by the broad general meaning of the terms in which the appended claims are expressed.
Number | Date | Country | Kind |
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109130299 | Sep 2020 | TW | national |