A fast multi-object tracking algorithm by fusing color and motion information

Hua Juliang, Liang Haicheng, Li Shijin
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Abstract

This paper proposes a fast algorithm for multiple targets tracking in complex environment of industrial workshop, which integrates the background modeling and the motion information. First, the probability density image is calculated based on histogram of color from each target object. Second, these probability density images are filtered according to background image obtained from previous background modeling. Third, the motion information is fused into its tracking process, and the optimal position is thus predicted. Finally, the algorithm removes the false targets in the previous frame from those images of color probability density, in order to avoid the disturbance to other targets in the later tracking procedure. The experimental results have demonstrated that the proposed new algorithm is capable of reducing background and similar objects disturbance and achieving real-time performance.
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一种融合颜色和运动信息的快速多目标跟踪算法
提出了一种将背景建模与运动信息相结合的工业车间复杂环境下多目标快速跟踪算法。首先,根据每个目标物体的颜色直方图计算概率密度图像;其次,根据之前背景建模得到的背景图像对这些概率密度图像进行滤波。第三,将运动信息融合到其跟踪过程中,从而预测出最优位置。最后,从彩色概率密度图像中去除前一帧中的假目标,避免后续跟踪过程中对其他目标的干扰。实验结果表明,该算法能够有效降低背景和相似目标干扰,达到实时性要求。
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