基于光流的城市道路车辆跟踪

Ya Liu, Yao Lu, Qingxuan Shi, Jianhua Ding
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引用次数: 42

摘要

车辆跟踪是智能交通监控的重要组成部分。但目前车辆跟踪面临着尺度变化、相似色干扰、视频数据分辨率低等问题。本文提出了一种改进的马尔可夫链蒙特卡罗(MCMC)光流MCMC(OF-MCMC)采样跟踪算法,用于车辆跟踪。首先,利用光流法得到车辆在初始帧的运动方向,解决了尺度变化的问题,并且利用光流法的非参数特性可以得到车辆的运动速度,取代了二阶自回归运动模型。其次,在计算是否接受某一粒子时,考虑了距离因素,可以减轻附近类似车辆的干扰;最后,针对低分辨率视频数据下的车辆跟踪问题,利用不同的特征权重生成更精确的特征模板,以获得更好的跟踪效果。实验结果表明,该算法具有较好的跟踪性能。
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Optical Flow Based Urban Road Vehicle Tracking
Vehicle tracking is an important part in intelligent transportation surveillance. But now vehicle tracking faces with the problems such as scale change, the interference of similar color, low resolution video data and so on. In this paper an improved Markov chain Monte Carlo(MCMC) named optical flow MCMC(OF-MCMC) sampling tracking algorithm is proposed for vehicle tracking. First, we use the optical flow method to get the moving direction of the vehicle in initial frames, which can solve the problem of scale change, what's more the optical flow method can get the moving speed of the vehicle which replaces the second-order autoregressive motion model owing to the non-parameter characteristic. Second, when calculating whether one particle is accepted or not, a distance factor is considered, which can relieve the interference of similar vehicle nearby. Finally, to deal with vehicle tracking in low resolution of the video data, we generate a more accurate feature template with different features weighted to get better tracking results. Experimental results show that the proposed tracking algorithm has better performance than some traditional ones.
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