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Similarity Learning with Spatial Constraints for Person Re-identification

机译:具有空间约束的相似度学习用于人员重新识别

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Pose variation remains one of the major factors that adversely affect the accuracy of person re-identification. Such variation is not arbitrary as body parts (e.g. head, torso, legs) have relative stable spatial distribution. Breaking down the variability of global appearance regarding the spatial distribution potentially benefits the person matching. We therefore learn a novel similarity function, which consists of multiple sub-similarity measurements with each taking in charge of a subregion. In particular, we take advantage of the recently proposed polynomial feature map to describe the matching within each subregion, and inject all the feature maps into a unified framework. The framework not only outputs similarity measurements for different regions, but also makes a better consistency among them. Our framework can collaborate local similarities as well as global similarity to exploit their complementary strength. It is flexible to incorporate multiple visual cues to further elevate the performance. In experiments, we analyze the effectiveness of the major components. The results on four datasets show significant and consistent improvements over the state-of-the-art methods.
机译:姿势变化仍然是对人员重新识别的准确性产生不利影响的主要因素之一。这种变化不是任意的,因为身体部位(例如头部,躯干,腿)具有相对稳定的空间分布。打破关于空间分布的全局外观的可变性可能使匹配的人受益。因此,我们学习了一种新颖的相似性函数,该函数由多个子相似性度量组成,每个度量都负责一个子区域。特别地,我们利用最近提出的多项式特征图来描述每个子区域内的匹配,并将所有特征图注入到统一框架中。该框架不仅输出不同区域的相似性度量,而且使它们之间具有更好的一致性。我们的框架可以协作局部相似性和全局相似性,以利用它们的互补优势。可以灵活地合并多个视觉提示,以进一步提高性能。在实验中,我们分析了主要成分的有效性。四个数据集上的结果显示出与最新方法相比的显着且一致的改进。

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