Hybrid algorithm for segmentation and tracking in surveillance

Huihuan Qian, Xinyu Wu, Y. Ou, Yangsheng Xu
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引用次数: 7

Abstract

In this paper, an integrated video surveillance system for robust tracking is introduced. In the blob detection part, an optical flow algorithm for crowded environment is studied experimentally and a comparison study with respect to traditional subtraction approach is carried out. In the segmentation part, different algorithms are fused to develop a hybrid algorithm for stable segmentation, and validation rules for successful segmentation are also presented preventing from false segmentation. In the tracking part, a blob's parameter, which we call color spectrum, is developed to identify different persons and track them robustly. A hybrid algorithm for tracking is also developed to combine color tracking with traditional distance tracking. The hybrid algorithms in segmentation and tracking enable the system to track persons when they change movement unpredictably in occlusion. Experimental results validate the proposed algorithm.
监控中分割与跟踪的混合算法
介绍了一种基于鲁棒跟踪的综合视频监控系统。在斑点检测部分,实验研究了一种适用于拥挤环境的光流算法,并与传统的减法方法进行了对比研究。在分割部分,将不同的算法进行融合,形成一种稳定分割的混合算法,并提出了分割成功的验证规则,防止分割错误。在跟踪部分,提出了一种blob参数,我们称之为色谱,用于识别不同的人并对其进行鲁棒跟踪。将颜色跟踪与传统的距离跟踪相结合,提出了一种混合跟踪算法。在分割和跟踪方面的混合算法使系统能够在遮挡情况下对运动变化不可预测的人进行跟踪。实验结果验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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