Set-Based Feature Learning for Person Re-identification via Third-Party Images

Yanna Zhao, Lei Wang, Yuncai Liu
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Abstract

Person re-identification from disjoint camera views has been an important and unsolved problem due to large variations in illumination, viewpoint and pose. One way to attack this is by designing a new, more powerful image representation. However, we believe that existing representations are already sufficient. The main difficulty is how to pick the most informative information using these representations. Inspired by the prototype theory from the cognition field and Exemplar-SVM, we propose a novel and simple set-based feature learning re-identification method via third-party images. In our settings, each query/gallery example is an image set of the same individual, not just a single image. Discriminative features of a certain individual image set are explored from the third-party images. Comparisons with state-of-the-art methods on benchmark datasets demonstrate impressive results using simple and common features.
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基于集合特征学习的第三方图像人物再识别
由于光照、视点和姿态的巨大差异,从不相交的相机视图中重新识别人物一直是一个重要的问题。解决这个问题的一种方法是设计一个新的、更强大的图像表示。但是,我们认为现有的陈述已经足够了。主要的困难是如何使用这些表示选择最有信息量的信息。受认知领域的原型理论和范例支持向量机的启发,我们提出了一种新颖、简单的基于集的第三方图像特征学习再识别方法。在我们的设置中,每个查询/图库示例都是同一个人的图像集,而不仅仅是单个图像。从第三方图像中挖掘某一单独图像集的判别特征。在基准数据集上与最先进的方法进行比较,使用简单和常见的特征显示出令人印象深刻的结果。
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