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A joint sparsity model for video anomaly detection

机译:用于视频异常检测的联合稀疏模型

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Video anomaly detection can be used in the transportation domain to identify unusual patterns such as traffic violations, accidents, unsafe driver behavior, street crime, and other suspicious activities. A common class of approaches relies upon object tracking and trajectory analysis. A key challenge is the ability to effectively handle occlusions among objects and their trajectories. Another challenge is the detection of joint anomalies between multiple moving objects. Recently sparse reconstruction techniques have been used for image classification, and shown to provide excellent robustness to occlusion. This paper proposes a new joint sparsity model for anomaly detection that effectively addresses both the robustness to occlusion and the detection of joint anomalies involving multiple objects. Experimental results on real and synthetic data demonstrate the effectiveness of our approach for both single-object and multi-object anomalies.
机译:视频异常检测可用于交通领域,以识别异常模式,例如交通违章,事故,不安全的驾驶员行为,街头犯罪和其他可疑活动。一类常见的方法依赖于对象跟踪和轨迹分析。一个关键的挑战是有效地处理对象及其轨迹之间的遮挡的能力。另一个挑战是检测多个运动对象之间的关节异常。最近,稀疏的重建技术已用于图像分类,并且显示出对遮挡具有出色的鲁棒性。本文提出了一种用于异常检测的新的联合稀疏模型​​,该模型有效地解决了遮挡的鲁棒性和涉及多个对象的联合异常的检测。真实和综合数据的实验结果证明了我们的方法对于单对象和多对象异常的有效性。

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