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Learning pairwise feature dissimilarities for person re-identification

机译:学习成对特征差异以重新识别人

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This paper deals with person re-identification in a multi-camera scenario with non-overlapping fields of view. Signature based matching has been the dominant choice for state-of-the-art person re-identification across multiple non-overlapping cameras. In contrast we propose a novel approach that exploits pairwise dissimilarities between feature vectors to perform the re-identification in a supervised learning framework. To achieve the proposed objective we address the person re-identification problem as follows: i) we extract multiple features from two persons images and compare them using standard distance metrics. This gives rise to what we called distance feature vector; ii) we learn the set of positive and negative distance feature vectors and perform the re-identification by classifying the test distance feature vectors. We evaluate our approach on two publicly available benchmark datasets and we compare it with state-of-the-art methods for person re-identification.
机译:本文涉及具有不重叠视场的多相机场景中的人员重新识别。基于签名的匹配已成为跨多个不重叠摄像头对最新技术人员进行重新识别的主要选择。相反,我们提出了一种新颖的方法,该方法利用特征向量之间的成对差异来在有监督的学习框架中执行重新识别。为了实现所提出的目标,我们解决了人员重新识别问题,如下所示:i)我们从两个人的图像中提取了多个特征,并使用标准距离度量对其进行了比较。这就是所谓的距离特征向量。 ii)我们了解正距离特征向量和负距离特征向量的集合,并通过对测试距离特征向量进行分类来执行重新识别。我们在两个可公开获得的基准数据集上评估我们的方法,并将其与最新的人员重新识别方法进行比较。

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