Abstract

Human multipose motion behavior is similar; there are many actions. However, it is difficult to recognize abnormal behavior. The existing human motion behavior anomaly recognition methods have the problems of low accuracy and being time-consuming. Therefore, an anomaly recognition method of human multipose motion behavior using Generative Adversarial Network (GAN) is proposed. The Gauss model is used to segment the human multipose motion behavior image, and the image foreground of the segmentation result is the human motion target detection result. The Shi-Tomasi algorithm is selected to extract contour feature points from human motion object detection results. The extracted contour features are set as hidden space random variables and input into the GAN. The GAN uses the generator and discriminator to recognize the multipose human motion behavior and determine whether the multipose human motion behavior is abnormal. The results show that the proposed algorithm can accurately recognize abnormal human multipose motion behavior, the recognition accuracy is higher than 99%, and the average recognition time is less than 200 ms. The shadow removal effect of the foreground image obtained by the proposed algorithm can realize the accurate recognition of human multipose motion behavior abnormalities and provide a reliable basis for research in related fields.

Highlights

  • Human posture behavior recognition is a research in the field of video analysis

  • Human abnormal behavior detection is a branch of human behavior recognition, that is, to recognize specific behaviors in different scenes, such as fighting in banks and other literature behaviors

  • Generative Adversarial Network (GAN) is applied to human multipose motion behavior anomaly recognition

Read more

Summary

Introduction

Human posture behavior recognition is a research in the field of video analysis. Human posture behavior technology has been widely used in auxiliary medical treatment, video surveillance, and so on. The recognition of multipose motion behavior abnormalities needs to determine whether there are abnormalities by analyzing human posture [2]. The abnormal recognition of human multipose motion behavior can be applied to many fields such as medical treatment and security. It is challenging to accurately recognize human multipose motion behavior abnormalities. The feature extraction of human motion posture is very important [7]. The accuracy of feature extraction determines the accuracy of multipose motion behavior. Human motion is formed by posture sequence, so it is more practical to extract human contour features from images

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call