一种基于运动模式的人群事件识别方法

C. Sindhuja, K. .. Srinivasagan, S. Kalaiselvi
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引用次数: 3

摘要

一个自动化的视觉监控过程从对目标检测和跟踪的低级分析扩展到对其行为的解释。分析人群是智能视频监控的一个新兴趋势,目的是检测异常情况。由于闭塞,跟踪人群中的每个人并分析他们的行为是一项具有挑战性的任务。因此,可以将人群作为一个群体实体来处理,而不是跟踪人群中的个人。人群的行为具有明显的时空特征,可以用运动模式来区分。该系统通过观察人群的流动、速度和方向等运动模式,系统地识别人群中的全局事件。首先,作为预处理步骤,进行背景相减以提取前景斑点,并估计光流以获得运动速度和方向。然后使用基于邻接矩阵的聚类(AMC)基于相似方向和接近度对人群进行聚类。聚类后,提取聚类的质心和方向来表示群体的行为。最后训练多类支持向量机(SVM)正确识别人群的行为。
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An efficient method for crowd event recognition based on motion patterns
An automated visual monitoring process expands from low level analysis of object detection and tracking to the interpretation of their behaviors. Analyzing human crowd is an emerging trend in intelligent video surveillance for the purpose of detecting abnormalities. Tracking every human being in a crowd and analyzing their behavior is a challenging task due to occlusions. Hence, the crowd can be handled as a group entity instead of tracking the individual in the crowd. The behavior of the crowd can be distinguished with motion patterns due to prominent spatio-temporal characteristics. The proposed system involves a systematic approach to recognize the global events in human crowd through observing motion patterns such as flow, speed and direction. Initially as a preprocessing step, background subtraction is performed to extract the foreground blobs and optical flow is estimated to obtain the velocity and direction of motion. The human crowds are then clustered based on similar direction and proximity using Adjacency Matrix based Clustering (AMC). After clustering, the centroid and orientation of the cluster are extracted inorder to represent the behavior of crowd. Finally the multiclass Support Vector Machine (SVM) is trained to correctly recognize the behavior of crowd.
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