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Robust Partial Matching for Person Search in the Wild

机译:野外人物搜索的鲁棒部分匹配

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Various factors like occlusions, backgrounds, etc., would lead to misaligned detected bounding boxes , e.g., ones covering only portions of human body. This issue is common but overlooked by previous person search works. To alleviate this issue, this paper proposes an Align-to-Part Network (APNet) for person detection and re-Identification (reID). APNet refines detected bounding boxes to cover the estimated holistic body regions, from which discriminative part features can be extracted and aligned. Aligned part features naturally formulate reID as a partial feature matching procedure, where valid part features are selected for similarity computation, while part features on occluded or noisy regions are discarded. This design enhances the robustness of person search to real-world challenges with marginal computation overhead. This paper also contributes a Large-Scale dataset for Person Search in the wild (LSPS), which is by far the largest and the most challenging dataset for person search. Experiments show that APNet brings considerable performance improvement on LSPS. Meanwhile, it achieves competitive performance on existing person search benchmarks like CUHK-SYSU and PRW.
机译:诸如遮挡物,背景等的各种因素将导致未对准的检测到的边界框,例如仅覆盖人体部分的边界框。这个问题很常见,但以前的搜索工作却忽略了它。为了缓解这个问题,本文提出了一种针对人的检测和重新识别(reID)的零件对齐网络(APNet)。 APNet改进了检测到的边界框,以覆盖估计的整体身体区域,从中可以提取和对齐有区别的零件特征。对齐的零件特征自然会将reID公式化为部分特征匹配过程,其中选择有效的零件特征进行相似度计算,而遮挡遮挡或嘈杂区域上的零件特征则被丢弃。这种设计提高了人员搜索对现实世界挑战的鲁棒性,并具有少量的计算开销。本文还为野外人物搜索(LSPS)提供了一个大型数据集,它是迄今为止最大和最具挑战性的人物搜索数据集。实验表明,APNet在LSPS上带来了可观的性能提升。同时,它在诸如CUHK-SYSU和PRW之类的现有人员搜索基准上取得了竞争优势。

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