Box abnormal state recognition method based on computer vision
A technology of computer vision and abnormal state, applied in computer parts, computing, neural learning methods, etc., can solve problems such as inability to intelligently recognize scenes, low work efficiency, and easy damage to door magnetic components, so as to ensure richness of samples and optimization Samples, the effect of improving the training effect
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Embodiment 1
[0037] Such as figure 1 As shown, the method for identifying an abnormal state of a box based on computer vision in this embodiment includes the following steps:
[0038] S1. Obtain and decode video data in a preset format. In this embodiment, the preset format is the H.264 format, which is decoded by FFMpeg. In order to reduce the volume of the video and reduce the bandwidth consumption during transmission, the video will be encoded and compressed to reduce the volume. In the H.264 format, the encoding algorithm is intra-frame compression and inter-frame compression. Intra-frame compression is an algorithm for generating I frames, and inter-frame compression is an algorithm for generating B frames and P frames. Among them, I frames are key frames, and P The information recorded in a frame is the difference between this frame and a previous key frame (or P frame), and the B frame is a two-way difference frame, and the recorded information is the difference between this frame...
Embodiment 2
[0046] The difference between this embodiment and Embodiment 1 is that in S5 of this embodiment, it is also judged by the face recognition module whether there is a person in the monitoring area; when there is a person in the monitoring area, face recognition is performed to determine whether the person is on record If it has not been filed, mark the corresponding video data as high-priority video data, and if it has been filed, mark the corresponding video data as low-priority video data. During frame processing, the high-priority video data corresponding to the camera in the preset area is prioritized for frame processing.
[0047]When there is no person in the monitoring area, the possibility of abnormal opening of the box door is small. Every preset time, the pictures are extracted and input into the neural network model for judgment, instead of judging the pictures in real time, which can reduce the neural network. Network models deal with stress. By collecting the face ...
Embodiment 3
[0049] The difference between this embodiment and Embodiment 1 is that in S5 in this embodiment, when there is no person in the monitoring area, the pictures are extracted every preset time, and the pictures are input into the trained neural network model for judgment. In this embodiment, one picture is extracted.
[0050] When there are people in the monitoring area, the number of preset pictures input to the neural network model is determined according to the high priority video data and the low priority video data, and the pictures corresponding to the high priority video data are input into the neural network model for judgment. Wherein, the number of preset pictures corresponding to high-priority video data is greater than the number of preset pictures corresponding to low-priority video data. In this embodiment, when the analysis module inputs pictures into the neural network model, it extracts a preset number of pictures at intervals and inputs them into the neural netw...
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