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Deep Global And Local Saliency Learning With New Re-Ranking For Person Re-Identification

机译:通过新的人员重新识别等级重新进行深度全球和本地显着学习

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Feature representation and similarity metric are two key issues in person re-identification (re-id). In conventional feature extraction, spatial patches of persons are processed indiscriminately, while the uniqueness and difference of local patches are often ignored. In addition, re-ranking is not be paid sufficient attention. In this paper, a re-id algorithm based on a novel saliency learning and re-ranking is proposed to address above problems. Specifically, a new saliency learning method based on a three-stream CNN is first presented to learn distinctive features for upper-body, lower-body and global body. Besides, by modeling the interrelationships between the query and the gallery images, a reweighting-based re-ranking scheme is designed to improve the initial metric matrix. Experimental results on three public datasets, i.e., CUHK03, CUHK01 and VIPeR, indicate that the proposed method achieves very competitive performance compared with the state-of-the-art approaches.
机译:特征表示和相似性度量是人员重新识别(re-id)中的两个关键问题。在常规特征提取中,人的空间补丁被不加选择地处理,而局部补丁的唯一性和差异常常被忽略。此外,重新排名没有得到足够的重视。针对上述问题,本文提出了一种基于显着性学习和重新排序的re-id算法。具体来说,首先提出了一种基于三流CNN的显着性学习方法,以学习上身,下身和整体身材的独特特征。此外,通过对查询图像与图库图像之间的相互关系进行建模,设计了一种基于权重的重排序方案,以改进初始度量矩阵。在三个公共数据集(CUHK03,CUHK01和VIPeR)上的实验结果表明,与最新方法相比,该方法具有非常好的竞争性能。

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