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Robust Visual Tracking Based on Online Learning of a Joint Sparse Dictionary

机译:基于在线学习的稀疏联合字典的鲁棒视觉跟踪

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In this paper, we propose a robust visual tracking algorithm based on online learning of a joint sparse dictionary. The joint sparse dictionary consists of positive and negative sub-dictionaries, which model foreground and background objects respectively. An online dictionary learning method is developed to update the joint sparse dictionary by selecting both positive and negative bases from bags of positive and negative image patches/templates during tracking. A linear classifier is trained with sparse coefficients of image patches in the current frame, which are calculated using the joint sparse dictionary. This classifier is then used to locate the target in the next frame. Experimental results show that our tracking method is robust against object variation, occlusion and illumination change.
机译:在本文中,我们提出了一种基于在线稀疏联合字典学习的鲁棒视觉跟踪算法。联合稀疏词典由正子词典和负子词典组成,分别对前景和背景对象进行建模。通过在跟踪过程中从正负图像补丁/模板包中选择正负两个碱基,开发了一种在线词典学习方法来更新联合稀疏词典。线性分类器使用当前帧中图像块的稀疏系数进行训练,这些稀疏系数是使用联合稀疏字典计算的。然后使用该分类器在下一帧中定位目标。实验结果表明,我们的跟踪方法对物体变化,遮挡和照明变化具有鲁棒性。

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