Abnormal Behavior Detection Based on Optical Flow Trajectory of Human Joint Points

Author(s):  
Yimin DOU ◽  
Cai Fudong ◽  
Jinping LI ◽  
Cheng Wei
Author(s):  
Mesyella ◽  
Timotius Ivan Casey ◽  
Edward Susanto ◽  
Irene Anindaputri Iswanto

Author(s):  
Qiang Wang ◽  
Qiao Ma ◽  
Chao-Hui Luo ◽  
Hai-Yan Liu ◽  
Can-Long Zhang

Abnormal behavior detection in crowd scenes has received considerable attention in the field of public safety. Traditional motion models do not account for the continuity of motion characteristics between frames. In this paper, we present a new feature descriptor, called the hybrid optical flow histogram. By importing the concept of acceleration, our method can indicate the change of speed in different directions of a movement. Therefore, our descriptor contains more information on the movement. We also introduce a spatial and temporal region saliency determination method to extract the effective motion area only for samples, which could effectively reduce the computational costs, and we apply a sparse representation to detect abnormal behaviors via sparse reconstruction costs. Sparse representation has a high rate of recognition performance and stability. Experiments involving the UMN datasets and the videos taken by us show that our method can effectively identify various types of anomalies and that the recognition results are better than existing algorithms.


2020 ◽  
Vol 2020 ◽  
pp. 1-11
Author(s):  
Beibei Song ◽  
Rui Sheng

Aiming at the problem of low performance of crowd abnormal behavior detection caused by complex backgrounds and occlusions, this paper proposes a single-image crowd counting and abnormal behavior detection via multiscale GAN network. The proposed method firstly designed an embedded GAN module with a multibranch generator and a regional discriminator to initially generate crowd-density maps; and then our proposed multiscale GAN module is added to further strengthen the generalization ability of the model, which can effectively improve the accuracy and robustness of the prediction detection and counting. On the basis of single-image crowd counting, synthetic optical-flow feature descriptor is adopted to obtain the crowd motion trajectory, and the classification of abnormal behavior is finally implemented. The simulation results show that the proposed algorithm can significantly improve the accuracy and robustness of crowd counting and abnormal behavior detection in real complex scenarios compared with the existing mainstream algorithms, which is suitable for engineering applications.


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