Motion Multi-Vehicle Recognition and Tracking in Stable Scene

T. Gao, Zhengguang Liu, Jun Zhang
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Abstract

A method for moving multi-target recognition and tracking in stable scene is presented. Optical flow is used to extract the velocity of pixels, and targets are recognized by combining motion character points obtained by binary discrete wavelet transforms (BDWT). A discrete kalman filter is used to track targets in the follow-up frames; the center and scale of tracking window are updated by a Mexico wavelet kernel function mean shift method which is embedded into the discrete kalman filter framework to stabilize the trajectories of the targets for robust tracking during mutual occlusion. The method is tested on several frame sequences and shown to achieve robust and reliable frame-rate recognition and tracking.
稳定场景下运动多车识别与跟踪
提出了一种稳定场景下运动多目标的识别与跟踪方法。利用光流提取像素速度,结合二值离散小波变换(BDWT)得到的运动特征点进行目标识别。采用离散卡尔曼滤波对后续帧中的目标进行跟踪;采用墨西哥小波核函数均值漂移方法更新跟踪窗口的中心和尺度,该方法嵌入到离散卡尔曼滤波框架中,稳定目标轨迹,实现互遮挡时的鲁棒跟踪。在多个帧序列上进行了测试,结果表明该方法能够实现鲁棒可靠的帧率识别和跟踪。
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