基于判别上下文信息分析的人物再识别排序优化

Jorge García, N. Martinel, C. Micheloni, Alfredo Gardel Vicente
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引用次数: 98

摘要

人物再识别是计算机视觉领域的一个开放性和挑战性问题。现有的再识别方法侧重于特征匹配的最佳方法(例如度量学习方法)或研究这些特征的相机间转换。这些方法几乎没有注意到第一排之间共享的视觉歧义问题。本文针对这一问题,提出了一种基于判别上下文信息分析的无监督排序优化方法。该方法通过消除常见的视觉模糊性来改进给定的初始排序。这可以通过分析它们的内容和上下文信息来实现。在三个公开的基准数据集和不同的基线方法上进行了大量的实验。结果显示,排名靠前的国家有了显著的进步。无论选择的数据集是什么,最先进的方法都明显优于我们的方法。
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Person Re-Identification Ranking Optimisation by Discriminant Context Information Analysis
Person re-identification is an open and challenging problem in computer vision. Existing re-identification approaches focus on optimal methods for features matching (e.g., metric learning approaches) or study the inter-camera transformations of such features. These methods hardly ever pay attention to the problem of visual ambiguities shared between the first ranks. In this paper, we focus on such a problem and introduce an unsupervised ranking optimization approach based on discriminant context information analysis. The proposed approach refines a given initial ranking by removing the visual ambiguities common to first ranks. This is achieved by analyzing their content and context information. Extensive experiments on three publicly available benchmark datasets and different baseline methods have been conducted. Results demonstrate a remarkable improvement in the first positions of the ranking. Regardless of the selected dataset, state-of-the-art methods are strongly outperformed by our method.
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