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Effective Crowd Anomaly Detection Through Spatio-temporal Texture Analysis 被引量:2

Effective Crowd Anomaly Detection Through Spatio-temporal Texture Analysis
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摘要 Abnormal crowd behaviors in high density situations can pose great danger to public safety. Despite the extensive installation of closed-circuit television(CCTV) cameras, it is still difficult to achieve real-time alerts and automated responses from current systems. Two major breakthroughs have been reported in this research. Firstly, a spatial-temporal texture extraction algorithm is developed. This algorithm is able to effectively extract video textures with abundant crowd motion details. It is through adopting Gaborfiltered textures with the highest information entropy values. Secondly, a novel scheme for defining crowd motion patterns(signatures)is devised to identify abnormal behaviors in the crowd by employing an enhanced gray level co-occurrence matrix model. In the experiments, various classic classifiers are utilized to benchmark the performance of the proposed method. The results obtained exhibit detection and accuracy rates which are, overall, superior to other techniques. Abnormal crowd behaviors in high density situations can pose great danger to public safety. Despite the extensive installation of closed-circuit television(CCTV) cameras, it is still difficult to achieve real-time alerts and automated responses from current systems. Two major breakthroughs have been reported in this research. Firstly, a spatial-temporal texture extraction algorithm is developed. This algorithm is able to effectively extract video textures with abundant crowd motion details. It is through adopting Gaborfiltered textures with the highest information entropy values. Secondly, a novel scheme for defining crowd motion patterns(signatures)is devised to identify abnormal behaviors in the crowd by employing an enhanced gray level co-occurrence matrix model. In the experiments, various classic classifiers are utilized to benchmark the performance of the proposed method. The results obtained exhibit detection and accuracy rates which are, overall, superior to other techniques.
出处 《International Journal of Automation and computing》 EI CSCD 2019年第1期27-39,共13页 国际自动化与计算杂志(英文版)
基金 funded by Chinese National Natural Science Foundation (No. 61671377) Shaanxi Smart City Technology Project of Xianyang (No. 2017k01-25-5)
关键词 Crowd behavior spatial-temporal TEXTURE GRAY level CO-OCCURRENCE matrix information ENTROPY Crowd behavior spatial-temporal texture gray level co-occurrence matrix information entropy
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