Re-Ranking via Metric Fusion for Object Retrieval and Person Re-Identification

S. Bai, Peng Tang, Philip H. S. Torr, Longin Jan Latecki
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引用次数: 80

Abstract

This work studies the unsupervised re-ranking procedure for object retrieval and person re-identification with a specific concentration on an ensemble of multiple metrics (or similarities). While the re-ranking step is involved by running a diffusion process on the underlying data manifolds, the fusion step can leverage the complementarity of multiple metrics. We give a comprehensive summary of existing fusion with diffusion strategies, and systematically analyze their pros and cons. Based on the analysis, we propose a unified yet robust algorithm which inherits their advantages and discards their disadvantages. Hence, we call it Unified Ensemble Diffusion (UED). More interestingly, we derive that the inherited properties indeed stem from a theoretical framework, where the relevant works can be elegantly summarized as special cases of UED by imposing additional constraints on the objective function and varying the solver of similarity propagation. Extensive experiments with 3D shape retrieval, image retrieval and person re-identification demonstrate that the proposed framework outperforms the state of the arts, and at the same time suggest that re-ranking via metric fusion is a promising tool to further improve the retrieval performance of existing algorithms.
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基于度量融合的目标检索和人物再识别排序
这项工作研究了对象检索和人员再识别的无监督重新排序过程,并特别关注多个度量(或相似度)的集合。虽然重新排序步骤是通过在底层数据流形上运行扩散过程来完成的,但融合步骤可以利用多个指标的互补性。综合总结了现有的融合扩散策略,系统分析了它们的优缺点,在此基础上提出了一种统一的鲁棒算法,既继承了它们的优点,又去除了它们的缺点。因此,我们称之为统一集成扩散(UED)。更有趣的是,我们得出继承属性确实源于一个理论框架,其中相关工作可以通过对目标函数施加额外约束和改变相似性传播的求解器来优雅地总结为UED的特殊情况。在三维形状检索、图像检索和人物再识别方面的大量实验表明,所提出的框架优于目前的技术水平,同时表明,通过度量融合进行重新排序是一种有前途的工具,可以进一步提高现有算法的检索性能。
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