The Object Tracking Based on Integral Covariance Matrix

Qian Wang, Xin Gu, Zheng-hao Sun, Zhe Li, Jun Ni
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Abstract

The object tracking by using single feature is possible to generate errors and easy to lose the target if the illumination and object size scale are changed. We propose a particle-filter-object-tracking algorithm. The proposed algorithm is based on a covariance region descriptor (CRD). The CRD can fuse different features of a targeted object region while handling various complex backgrounds. Hence, the robustness of tracking algorithm is achieved. Moreover, the integral covariance matrix computation is an extension to Bayesian tracking framework, which makes the tracking more efficiency and for handling high performance tracking in real-time. The comparative experiments show that the proposed algorithm is more robust and its efficiency of computation of tracking is higher performed than the one uses traditional the object tracking algorithm with only consideration of single feature.
基于积分协方差矩阵的目标跟踪
利用单一特征进行目标跟踪,在改变光照和目标尺寸尺度的情况下容易产生误差,容易丢失目标。提出了一种粒子滤波-目标跟踪算法。该算法基于协方差区域描述符(CRD)。CRD可以在处理各种复杂背景时融合目标区域的不同特征。从而达到了跟踪算法的鲁棒性。此外,积分协方差矩阵计算是对贝叶斯跟踪框架的一种扩展,使得跟踪更加高效,能够实时处理高性能跟踪。对比实验表明,与传统的只考虑单一特征的目标跟踪算法相比,该算法具有更强的鲁棒性和更高的跟踪计算效率。
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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