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Dual-Mode Vehicle Motion Pattern Learning for High Performance Road Traffic Anomaly Detection

机译:用于高性能道路交通异常检测的双模式车辆运动模式学习

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Anomaly detection on road traffic is an important task due to its great potential in urban traffic management and road safety. It is also a very challenging task since the abnormal event happens very rarely and exhibits different behaviors. In this work, we present a model to detect anomaly in road traffic by learning from the vehicle motion patterns in two distinctive yet correlated modes, i.e., the static mode and the dynamic mode, of the vehicles. The static mode analysis of the vehicles is learned from the background modeling followed by vehicle detection procedure to find the abnormal vehicles that keep still on the road. The dynamic mode analysis of the vehicles is learned from detected and tracked vehicle trajectories to find the abnormal trajectory which is aberrant from the dominant motion patterns. The results from the dual-mode analyses are finally fused together by driven a re-identification model to obtain the final anomaly. Experimental results on the Track 2 testing set of NVIDIA AI CITY CHALLENGE show the effectiveness of the proposed dual-mode learning model and its robustness in different real scenes. Our result ranks the first place on the final Leaderboard of the Track 2.
机译:由于道路交通异常检测在城市交通管理和道路安全方面具有巨大潜力,因此它是一项重要的任务。这也是一项非常具有挑战性的任务,因为异常事件很少发生并且表现出不同的行为。在这项工作中,我们提出了一种通过从两种不同但相关的模式,即车辆的静态模式和动态模式下的车辆运动模式中学习来检测道路交通异常的模型。从背景建模中学习车辆的静态模式分析,然后通过车辆检测过程来发现仍在道路上行驶的异常车辆。从检测到的和跟踪的车辆轨迹中学习车辆的动态模式分析,以找到异常轨迹,该异常轨迹与主要运动模式无关。最后,通过驱动重新识别模型将双模式分析的结果融合在一起,以获得最终的异常。在NVIDIA AI CITY CHALLENGE的Track 2测试集中进行的实验结果表明,所提出的双模式学习模型的有效性及其在不同真实场景中的鲁棒性。我们的成绩在Track 2的最终排行榜中排名第一。

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