Joint Probabilistic Matching Using m-Best Solutions

S. H. Rezatofighi, Anton Milan, Zhen Zhang, Javen Qinfeng Shi, A. Dick, I. Reid
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引用次数: 25

Abstract

Matching between two sets of objects is typically approached by finding the object pairs that collectively maximize the joint matching score. In this paper, we argue that this single solution does not necessarily lead to the optimal matching accuracy and that general one-to-one assignment problems can be improved by considering multiple hypotheses before computing the final similarity measure. To that end, we propose to utilize the marginal distributions for each entity. Previously, this idea has been neglected mainly because exact marginalization is intractable due to a combinatorial number of all possible matching permutations. Here, we propose a generic approach to efficiently approximate the marginal distributions by exploiting the m-best solutions of the original problem. This approach not only improves the matching solution, but also provides more accurate ranking of the results, because of the extra information included in the marginal distribution. We validate our claim on two distinct objectives: (i) person re-identification and temporal matching modeled as an integer linear program, and (ii) feature point matching using a quadratic cost function. Our experiments confirm that marginalization indeed leads to superior performance compared to the single (nearly) optimal solution, yielding state-of-the-art results in both applications on standard benchmarks.
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基于m-最优解的联合概率匹配
两组对象之间的匹配通常是通过寻找使联合匹配得分最大化的对象对来实现的。在本文中,我们认为这种单一的解决方案并不一定导致最优匹配精度,一般的一对一分配问题可以通过在计算最终相似度量之前考虑多个假设来改进。为此,我们建议利用每个实体的边际分配。在此之前,这个想法一直被忽视,主要是因为由于所有可能的匹配排列的组合数量,精确的边缘化是难以处理的。在这里,我们提出了一种利用原始问题的m-最优解来有效近似边际分布的通用方法。由于边际分布中包含了额外的信息,该方法不仅改进了匹配解,而且提供了更准确的结果排序。我们在两个不同的目标上验证了我们的主张:(i)作为整数线性程序建模的人员重新识别和时间匹配,以及(ii)使用二次成本函数的特征点匹配。我们的实验证实,与单一(接近)最优解决方案相比,边缘化确实会带来更好的性能,在标准基准测试的两个应用程序中产生最先进的结果。
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