Robust visual tracking with occlusion detection using compressive sensing

Mehdi Khodadadi, A. Raie
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引用次数: 2

Abstract

In this paper, tracking problem is considered as a sparse approximation of target by templates created during video process. In addition, some trivial templates are used to avoid the effects of noise and illumination changes. Each candidate is sparsely represented by the template set. This goal is achieved by solving an l1- regularized least-square equation. To find tracking result, a candidate with the minimum reconstruction error was adopted. Then, tracking was continued in particle filter framework. Two ideas were used to improve the algorithm performance. Firstly, the dictionary set was adaptively updated according to appearance changes. Secondly, using the area around the target, occlusion was diagnosed and subsequently the template set was updated. This technique prevented the occluded part of the target getting into the template set. The proposed approach shows a better performance than other previous tracker against full occlusion problem.
基于压缩感知的遮挡检测鲁棒视觉跟踪
本文将跟踪问题看作是视频过程中创建的模板对目标的稀疏逼近。此外,还使用了一些简单的模板来避免噪声和光照变化的影响。每个候选对象由模板集稀疏表示。这个目标是通过求解一个l1正则化最小二乘方程来实现的。为了得到跟踪结果,采用重构误差最小的候选对象。然后在粒子滤波框架下继续跟踪。采用了两种思想来提高算法的性能。首先,根据外观变化自适应更新字典集;其次,利用目标周围的区域进行遮挡诊断并更新模板集;这种技术可以防止目标被遮挡的部分进入模板集。该方法在全遮挡问题上表现出比以往跟踪器更好的性能。
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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