基于姿态估计的人体异常行为识别算法

    Human Abnormal Behavior Recognition Algorithm Based on Pose Estimation

    • 摘要: 为了及时、准确地检测视频监控下人体异常行为的发生,提出一种基于姿态估计的人体异常行为识别算法. 该算法首先利用基于深度学习的人体姿态估计算法提取人体的骨骼关键点坐标,组成包含空间信息和时间序列信息的时空图模型,模型中每个节点对应于人体的一个关节,同时包含2种类型的边,一种是符合人体关节自然连通性的空间边,另一种是跨越连续时间的时序边;然后,对时空图进行多阶段的时空图卷积操作,提取高级特征;最后,用Softmax分类器进行行为分类,得到行为结果并判断是否为异常行为. 在KTH单人数据集和HMDB51多人交互数据集上进行对比实验,与当前先进的方法相比,在准确率方面取得了较好的结果. 对实时视频进行测试,实时检测识别帧率达到25帧/s,可实现实时处理监控视频.

       

      Abstract: To detect the occurrence of abnormal human behaviors under video surveillance in real time accurately, a recognition algorithm of abnormal human behavior based on pose estimation was proposed in this paper. First, the human pose estimation algorithm based on deep learning was used to extract the coordinates of the key points of the human skeleton to form a spatial temporal graph model containing spatial information and time series information. Each node in the model corresponded to a joint of the human and contained two types of edges at the same time. One was the space edge that conformed to the natural connectivity of the joints, and the other was the temporal edge across continuous time. After that, the spatial temporal graph was subjected to multi-stage spatial temporal graph convolution operations to extract advanced features. Finally the Softmax classifier was used for behavior classification. the behavior result was obtained and whether it is abnormal behavior was judged. Compared with the current advanced methods, the experimental results of KTH single-person dataset and HMDB51 multi-person interaction dataset show that the accuracy is better. The real-time video was tested, and the frame rate of real-time detection and recognition reached 25 frames per second to realize real-time monitoring video processing.

       

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