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Abnormal behavior detection by causality analysis and sparse reconstruction

作者:王军; 夏利民abnormalbehaviordetectiongrangercausalitytestfeaturesparsereconstruction

摘要:A new approach for abnormal behavior detection was proposed using causality analysis and sparse reconstruction. To effectively represent multiple-object behavior, low level visual features and causality features were adopted. The low level visual features, which included trajectory shape descriptor, speeded up robust features and histograms of optical flow, were used to describe properties of individual behavior, and causality features obtained by causality analysis were introduced to depict the interaction information among a set of objects. In order to cope with feature noisy and uncertainty, a method for multiple-object anomaly detection was presented via a sparse reconstruction. The abnormality of the testing sample was decided by the sparse reconstruction cost from an atomically learned dictionary. Experiment results show the effectiveness of the proposed method in comparison with other state-of-the-art methods on the public databases for abnormal behavior detection.

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中南大学学报·社会科学版

《中南大学学报·社会科学版》(CN:43-1393/C)是一本有较高学术价值的双月刊,自创刊以来,选题新奇而不失报道广度,服务大众而不失理论高度。颇受业界和广大读者的关注和好评。 《中南大学学报·社会科学版》坚持以马列主义、思想、邓小平理论、“三个代表”重要思想、科学发展观和新时代中国特色社会主义思想为指导,坚持正确的政治导向和出版方向,认真贯彻执行党和国家的出版方针与政策,遵守党和国家的宣传工作纪律,坚持为人民服务、为社会主义服务的“二为”方向,认真贯彻党的“双百”方针。

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