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Kernel Partial Least Squares for person re-identification

机译:核心偏最小二乘因素重新识别

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Person re-identification (Re-ID) keeps the same identity for a person as he moves along an area with nonoverlapping surveillance cameras. Re-ID is a challenging task due to appearance changes caused by different camera viewpoints, occlusion and illumination conditions. While robust and discriminative descriptors are obtained combining texture, shape and color features in a high-dimensional representation, the achievement of accuracy and efficiency demands dimensionality reduction methods. At this paper, we propose variations of Kernel Partial Least Squares (KPLS) that simultaneously reduce the dimensionality and increase the discriminative power. The Cross-View KPLS (X-KPLS) and KPLS Mode A capture cross-view discriminative information and are successful for unsupervised and supervised Re-ID. Experimental results demonstrate that X-KPLS presents equal or higher matching results when compared to other methods in literature at PRID450S.
机译:人员重新识别(RE-ID)对一个人保持相同的身份,因为他沿着具有非封印监视摄像机的区域移动。由于不同的相机观点,闭塞和照明条件引起的外观变化,RE-ID是一个具有挑战性的任务。虽然在高维表示中,获得了组合纹理,形状和颜色特征的鲁棒和辨别描述符,但准确性和效率的实现需要维度减少方法。在本文中,我们提出了同时降低了维度的核心最小二乘(KPLS)的变化并增加了辨别力。巧克力视差KPLS(X-KPLS)和KPLS模式捕获跨视图鉴别信息,并成功地为无监督和监督的RE-ID。实验结果表明,与PRID450S的文献中的其他方法相比,X-KPLS呈现相等或更高的匹配结果。

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