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Person re-identification with block sparse recovery

机译:具有区块稀疏恢复的人员重新识别

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We consider the problem of automatically re-identifying a person of interest seen in a "probe" camera view among several candidate people in a "gallery" camera view. This problem, called person re-identification, is of fundamental importance in several video analytics applications. While extracting knowledge from high dimensional visual representations based on the notions of sparsity and regularization has been successful for several computer vision problems, such techniques have not been fully exploited in the context of the re-identification problem. Here, we develop a principled algorithm for the re-identification problem in the general framework of learning sparse visual representations. Given a set of feature vectors for a person in one camera view (corresponding to multiple images as they are tracked), we show that a feature vector representing the same person in another view approximately lies in the linear span of this feature set. Furthermore, under certain conditions, the associated coefficient vector can be characterized as being block sparse. This key insight allows us to design an algorithm based on block sparse recovery that achieves stateof-the-art results in multi-shot person re-identification. We also revisit an older feature transformation technique, Fisher discriminant analysis, and show that, when combined with our proposed formulation, it outperforms many sophisticated methods. Additionally, we show that the proposed algorithm is flexible and can be used in conjunction with existing metric learning algorithms, resulting in improved ranking performance. We perform extensive experiments on several publicly available datasets to evaluate the proposed algorithm. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们考虑在“图库”相机视图中的几个候选人员中自动重新识别在“探针”相机视图中看到的感兴趣的人的问题。在几个视频分析应用程序中,这个被称为人员重新识别的问题至关重要。尽管基于稀疏性和正则化的概念从高维视觉表示中提取知识已成功解决了一些计算机视觉问题,但在重新识别问题的背景下尚未充分利用此类技术。在这里,我们为学习稀疏视觉表示的通用框架中的重识别问题开发了一种有原则的算法。给定一个相机视图中一个人的一组特征向量(对应于被跟踪的多个图像),我们表明在另一个视图中代表同一个人的特征向量大约位于此特征集的线性范围内。此外,在某些条件下,相关系数向量的特征可以是块稀疏。这一关键洞察力使我们能够设计一种基于块稀疏恢复的算法,该算法可实现多人重新识别的最新结果。我们还重新研究了较旧的特征转换技术,即Fisher判别分析,并表明,与我们提出的公式结合使用时,它的性能优于许多复杂的方法。此外,我们证明了所提出的算法是灵活的,可以与现有的度量学习算法结合使用,从而提高排名性能。我们对几个公开可用的数据集进行了广泛的实验,以评估该算法。 (C)2016 Elsevier B.V.保留所有权利。

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