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Grayscale-thermal Tracking via Canonical Correlation Analysis Based Inverse Sparse Representation

机译:基于典范相关分析的逆稀疏表示的灰度热跟踪

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The grayscale-thermal tracking has attracted increasing attention due to the fact that it can make thermal information complement with grayscale information. Since there exists a large gap between the grayscale and the thermal video sequences, how to exploit the intrinsic relation between the grayscale and the thermal targets has become the key point. To address this issue, in this paper, we propose an inverse sparse representation based framework for the grayscale-thermal tracking, in which a canonical correlation analysis based inverse sparse representation model is adopted to jointly encode the target candidates in the grayscale and the thermal video sequences. The target coding process can explore the similarity between the grayscale and the thermal appearance in a common subspace, which can highlight the useful and discriminative information in both grayscale and thermal targets. The experiments on OSU-CT dataset can illustrate the promising performance of our tracking framework.
机译:灰度-热跟踪由于其可以使热信息与灰度信息互补而引起了越来越多的关注。由于灰度与热视频序列之间存在较大的差距,如何利用灰度与热目标之间的内在联系已成为关键。为了解决这个问题,在本文中,我们提出了一种基于反稀疏表示的灰度-热跟踪框架,其中采用了基于典范相关分析的反稀疏表示模型,对灰度和热视频中的目标候选进行联合编码。序列。目标编码过程可以在公共子空间中探索灰度和热外观之间的相似性,从而可以突出显示灰度和热目标中的有用且有区别的信息。 OSU-CT数据集上的实验可以说明我们的跟踪框架的有希望的性能。

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