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Robust Object Tracking based on Structural Local Sparse Representation and Incremental Subspace Learning

机译:基于结构局部稀疏表示和增量子空间学习的强大对象跟踪

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We develop a robust tracking method based on the structural local sparse representation and incremental subspace learning. This representation exploits both partial information and spatial information of the target. The similarity obtained by pooling across the local patches helps locate the target more accurately. In addition, we develop a template update method which combines incremental subspace learning and sparse representation. This strategy adapts the template to the appearance change of the target with less drifting and reduces the influence of the occluded target template as well. Experiments on challenging sequences with evaluation of the state-of-the-art methods show effectiveness of the proposed algorithm.
机译:我们基于结构局部稀疏表示和增量子空间学习开发了一种鲁棒的跟踪方法。该表示利用目标的部分信息和空间信息。通过汇集在本地补丁中获得的相似性有助于更准确地定位目标。此外,我们开发了一个模板更新方法,它结合了增量子空间学习和稀疏表示。该策略适应模板,以较少漂移的目标变化,减少了遮挡目标模板的影响。挑战性序列的实验,评价最先进的方法显示了该算法的有效性。

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