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Cross-view kernel collaborative representation classification for person re-identification

机译:巧克力视图内核协作表示分类对人重新识别

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摘要

Currently, person re-identification (re-ID) has been applied in many public security applications. Yet owing to the big visual appearance changes of the same identity under different views, re-ID still faces many challenges. To reduce the intra-person discrepancy, extracting more power feature representations from pedestrian images is a reasonable solution. We propose a cross-view kernel collaborative representation based classification (CV-KCRC) method for person re-ID in our work. Our method aims to find more robust and discriminative feature representations that embody cross-view information to enhance the identification capability of features. We map the image features into a high dimensional feature space first and then use view-specific projection matrices to project the high dimensional features into a common low dimensional subspace. We expect that in the shared subspace the codings of same person from different views have the highest similarity and better performance can be achieved. Experiments on seven commonly used datasets reveal that our algorithm outperforms many state-of-the-art algorithms.
机译:目前,人员重新识别(RE-ID)已应用于许多公共安全应用程序。然而由于不同观点在相同身份的巨大视觉外观变化,重新ID仍然面临着许多挑战。为了减少人内的差异,从步行图像提取更多的功率特征表示是合理的解决方案。我们提出了一种基于跨视野协作表示的基于基于内核的分类(CV-KCRC)方法,用于我们工作中的人员重新ID。我们的方法旨在查找更强大和辨别特征表示,可以体现互联信息以增强特征的识别能力。我们首先将图像特征映射到高维特征空间中,然后使用视图特定的投影矩阵将高维特征投影成常见的低维子空间。我们希望在共享子空间中,来自不同视图的同一个人的编码具有最高的相似性,并且可以实现更好的性能。七个常用数据集的实验表明,我们的算法优于许多最先进的算法。

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