Instance Guided Proposal Network for Person Search

Wenkai Dong, Zhaoxiang Zhang, Chunfeng Song, T. Tan
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引用次数: 66

Abstract

Person detection networks have been widely used in person search. These detectors discriminate persons from the background and generate proposals of all the persons from a gallery of scene images for each query. However, such a large number of proposals have a negative influence on the following identity matching process because many distractors are involved. In this paper, we propose a new detection network for person search, named Instance Guided Proposal Network (IGPN), which can learn the similarity between query persons and proposals. Thus, we can decrease proposals according to the similarity scores. To incorporate information of the query into the detection network, we introduce the Siamese region proposal network to Faster-RCNN and we propose improved cross-correlation layers to alleviate the imbalance of parameters distribution. Furthermore, we design a local relation block and a global relation branch to leverage the proposal-proposal relations and query-scene relations, respectively. Extensive experiments show that our method improves the person search performance through decreasing proposals and achieves competitive performance on two large person search benchmark datasets, CUHK-SYSU and PRW.
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基于实例的人物搜索建议网络
人体检测网络在人体搜索中得到了广泛的应用。这些检测器从背景中区分人物,并为每个查询从场景图像库中生成所有人物的建议。然而,如此大量的建议会对随后的身份匹配过程产生负面影响,因为涉及到许多干扰因素。本文提出了一种新的人物搜索检测网络——实例引导建议网络(Instance Guided Proposal network, IGPN),该网络可以学习查询人物与建议之间的相似度。因此,我们可以根据相似度分数来减少提案。为了将查询信息整合到检测网络中,我们在Faster-RCNN中引入了Siamese区域建议网络,并提出了改进的互相关层来缓解参数分布的不平衡。此外,我们设计了一个局部关系块和一个全局关系分支来分别利用提议-提议关系和查询-场景关系。大量的实验表明,我们的方法通过减少建议来提高人的搜索性能,并在中大-中山大学和PRW两个大型人的搜索基准数据集上取得了具有竞争力的性能。
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