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Kernel multiblock partial least squares for a scalable and multicamera person reidentification system

机译:可扩展的多机位人员识别系统的内核多块偏最小二乘

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Person reidentification (Re-ID) aims at establishing global identities for individuals as they move across a camera network. It is a challenging task due to the drastic appearance changes that occur between cameras as a consequence of different pose and illumination conditions. Pairwise matching models yield state-of-the-art results in most of the person Re-ID datasets by capturing nuances that are robust and discriminative for a specific pair of cameras. Nonetheless, pairwise models are not scalable with the number of surveillance cameras. Therefore, elegant solutions combining scalability with high matching rates are crucial for the person Re-ID in real-world scenarios. We tackle this problem proposing a multicamera nonlinear regression model called kernel multiblock partial least squares (kernel MBPLS), a single subspace model for the entire camera network that uses all the labeled information. In this subspace, probe and gallery individual can be successfully matched. Experimental results in three multicamera person Re-ID datasets (WARD, RAiD, and SAIVT-SoftBIO) demonstrate that the kernel MBPLS presents favorable aspects, such as the scalability and robustness with respect to the number of cameras combined with the high matching rates. (c) 2018 SPIE and IS&T
机译:人员重新识别(Re-ID)旨在为个体在摄像机网络中移动时为其建立全局身份。由于不同的姿势和照明条件,相机之间会发生剧烈的外观变化,因此这是一项艰巨的任务。成对匹配模型通过捕获对特定摄像机对具有鲁棒性和判别力的细微差别,在大多数人Re-ID数据集中产生了最新的结果。但是,成对模型无法随监视摄像机的数量扩展。因此,将可伸缩性与高匹配率相结合的优雅解决方案对于现实世界中人Re-ID至关重要。我们解决了这个问题,提出了一个多相机非线性回归模型,称为内核多块偏最小二乘(内核MBPLS),这是使用所有标记信息的整个相机网络的单个子空间模型。在此子空间中,探针和画廊个体可以成功匹配。在三个多摄像机人的Re-ID数据集(WARD,RAiD和SAIVT-SoftBIO)中的实验结果表明,内核MBPLS表现出有利的方面,例如相对于摄像机数量的高可伸缩性和鲁棒性以及高匹配率。 (c)2018 SPIE和IS&T

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