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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Joint graph regularized dictionary learning and sparse ranking for multi-modal multi-shot person re-identification
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Joint graph regularized dictionary learning and sparse ranking for multi-modal multi-shot person re-identification

机译:联合图正则大学中文中的字典学习和稀疏排名对多模态多射击人重新识别

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摘要

The promising achievement of sparse ranking in image-based recognition gives rise to a number of development on person re-identification (Re-ID) which aims to reconstruct the probe as a linear combination of few atoms/images from an over-complete dictionary/gallery. However, most of the existing sparse ranking based Re-ID methods lack considering the geometric relationships between probe, gallery, and cross-modal images of the same person in multi-shot Re-ID. In this paper, we propose a novel joint graph regularized dictionary learning and sparse ranking method for multi-modal multi-shot person Re-ID. First, we explore the probe-based geometrical structure by enforcing the smoothness between the codings/coefficients, which refers to the multi-shot images from the same person in probe. Second, we explore the gallery-based geometrical structure among gallery images, which encourages the multi-shot images from the same person in the gallery making similar contributions while reconstructing a certain probe image. Third, we explore the cross-modal geometrical structure by enforcing the smoothness between the cross-modal images and thus extend our model for the multi-modal case. Finally, we design an APG based optimization to solve the problem. Comprehensive experiments on benchmark datasets demonstrate the superior performance of the proposed model. The code is available at https://github.com/ttaalle/Lhc. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在基于形象的识别中稀疏排名的有希望的成就引起了人员重新识别(RE-ID)的许多发展,其旨在将探针重建为几个原子/图像的线性组合从完整的字典/画廊。然而,基于漏洞的大多数基于稀疏排名的RE-ID方法缺少探测,画廊和多枪重新ID中同一个人的跨模型图像之间的几何关系。在本文中,我们提出了一种新的联合图正则化词典学习和稀疏排名方法,用于多模态多射击人重新ID。首先,我们通过强制执行编码/系数之间的平滑度来探讨基于探针的几何结构,这是指来自同一个人的多射图像。其次,我们探讨了画廊图像中的基于画廊的几何结构,这鼓励来自相同人的多射图像在重建某个探测图像的同时进行类似的贡献。第三,我们通过强制执行跨模型图像之间的平滑度并因此探讨跨模型几何结构,从而扩展了我们的多模态情况的模型。最后,我们设计了基于APG的优化来解决问题。基准数据集的综合实验证明了所提出的模型的卓越性能。该代码可在https://github.com/ttaalle/lhc上获得。 (c)2020 elestvier有限公司保留所有权利。

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