Computer-aided recognition and analysis of abnormal behavior in video

被引:0
作者
Zhao Z. [1 ,2 ]
Wu Q. [1 ]
机构
[1] School of Intelligent Engineering, Zhengzhou University of Aeronautics, Zhengzhou
[2] Beijing Advanced Innovation Center for Intelligent Robots and Systems, Beijing Institute of Technology, Beijing
来源
Computer-Aided Design and Applications | 2021年 / 18卷 / S3期
基金
中国国家自然科学基金;
关键词
Abnormal behavior recognition; Computer-aided; Convolutional network; Dual-stream convolutional fusion;
D O I
10.14733/cadaps.2021.S3.34-45
中图分类号
学科分类号
摘要
In intelligent computer-aided video abnormal behavior recognition, pedestrian behavior analysis technology can detect and handle abnormal behaviors in time, which has great practical value in ensuring social safety. We analyze a deep learning video behavior recognition network that has advantages in current research. The network first sparsely sampled the input video to obtain the video frame of each video segment, and then used a two-dimensional convolutional network to extract the characteristics of each video frame, then used a three-dimensional network to fuse them. The method realizes the recognition of long-term and short-term actions in the video at the same time. In order to overcome the shortcoming of the large amount of calculation in the 3D convolution part of the network, this paper proposes an improvement to this module in the network, and proposes a mobile 3D convolution network structure. Aiming at the problem of low utilization of long-term motion features in video sequences, this paper constructs a deep residual module by introducing long and short-term memory networks, residual connection design, etc., to fully and effectively utilize the long-term dynamic features in video sequences. Aiming at the problem of large differences in similar actions and small differences between classes in abnormal behavior videos, this paper proposes a 2CSoftmax function based on double center loss to optimize the network model, which is beneficial to maximize the distance between classes and minimize the distance between classes, so as to realize the classification and recognition of similar actions and improve the recognition accuracy. © 2021 CAD Solutions, LLC.
引用
收藏
页码:34 / 45
页数:11
相关论文
共 12 条
  • [1] Yang Y., Li L., Liu Z., Liu G., Abnormal behavior recognition based on spatio-temporal context, Journal of Information Processing Systems, 16, 3, pp. 612-628, (2020)
  • [2] Xie S., Zhang X., Cai J., Video crowd detection and abnormal behavior model detection based on machine learning method, Neural Computing and Applications, 31, 1, pp. 175-184, (2019)
  • [3] Wang J., Xia L., Abnormal behavior detection in videos using deep learning, Cluster Computing, 22, 4, pp. 9229-9239, (2019)
  • [4] Zhang J., Wu C., Wang Y., Wang P., Detection of abnormal behavior in narrow scene with perspective distortion, Machine Vision and Applications, 30, 5, pp. 987-998, (2019)
  • [5] Geng Y., Du J., Liang M., Abnormal event detection in tourism video based on salient spatio-temporal features and sparse combination learning, World Wide Web, 22, 2, pp. 689-715, (2019)
  • [6] Li Y., Zhai Q., Ding S., Yang F., Li G., Zheng Y.-F., Efficient health-related abnormal behavior detection with visual and inertial sensor integration, Pattern Analysis and Applications, 22, 2, pp. 601-614, (2019)
  • [7] Fernandez-Ramirez J., Alvarez-Meza A., Pereira E.-M., Orozco-Gutierrez A., Castellanos-Dominguez G., Video-based social behavior recognition based on kernel relevance analysis, The Visual Computer, 36, 8, pp. 1535-1547, (2020)
  • [8] Li Y., Miao Q., Qi X., Ma Z., Ouyang W., A spatiotemporal attention-based ResC3D model for large-scale gesture recognition, Machine Vision and Applications, 30, 5, pp. 875-888, (2019)
  • [9] Anitha G., Priya S.-B., Posture based health monitoring and unusual behavior recognition system for elderly using dynamic Bayesian network, Cluster Computing, 22, 6, pp. 13583-13590, (2019)
  • [10] Wan S., Qi L., Xu X., Tong C., Gu Z., Deep learning models for real-time human activity recognition with smartphones, Mobile Networks and Applications, 25, 2, pp. 743-755, (2020)