Traffic Camera Anomaly Detection

Yuan-Kai Wang, Ching-Tang Fan, Jian-Fu Chen
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引用次数: 16

Abstract

Detection of camera anomaly and tampering have attracted increasing interest in video surveillance for real-time alert of camera malfunction. However, the anomaly detection for traffic cameras monitoring vehicles and recognizing license plates has not been formally studied and it cannot be solved by existing methods. In this paper, we propose a camera anomaly detection method for traffic scene that has distinct characteristics of dynamics due to traffic flow and traffic crowd, compared with normal surveillance scene. Image quality used as low-level features are measured by no-referenced metrics. Image dynamics used as mid-level features are computed by histogram distribution of optical flow. A two-stage classifier for the detection of anomaly is devised by the modeling of image quality and video dynamics with probabilistic state transition. The proposed approach is robust to many challenging issues in urban surveillance scenarios and has very low false alarm rate. Experiments are conducted on real-world videos recorded in traffic scene including the situations of high traffic flow and severe crowding. Our test results demonstrate that the proposed method is superior to previous methods on both precision rate and false alarm rate for the anomaly detection of traffic cameras.
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交通摄像头异常检测
对摄像机异常和篡改的检测在视频监控中引起了越来越多的关注,从而实现对摄像机故障的实时预警。然而,对于交通摄像头监控车辆和车牌识别的异常检测问题,目前还没有正式的研究,现有的方法也无法解决。本文提出了一种针对交通场景的摄像机异常检测方法,该交通场景与普通监控场景相比,由于交通流和交通人群的影响,具有明显的动态特征。作为底层特征的图像质量通过无参考度量来衡量。利用光流的直方图分布计算作为中级特征的图像动力学。通过对带有概率状态转移的图像质量和视频动态建模,设计了一种两阶段的异常检测分类器。该方法对城市监控场景中的许多具有挑战性的问题具有鲁棒性,并且具有非常低的误报率。实验采用真实的交通场景视频,包括高交通流量和严重拥挤的情况。测试结果表明,该方法在交通摄像头异常检测的准确率和虚警率上均优于现有方法。
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