The existing person search methods use the annotated labels of person identities to train deep networks in a supervised manner that requires a huge amount of time and effort for human labeling. In this paper, we first introduce a novel framework of person search that is able to train the network in the absence of the person identity labels, and propose efficient unsupervised clustering methods to substitute the supervision process using annotated person identity labels. Specifically, we propose a hard negative mining scheme based on the uniqueness property that only a single person has the same identity to a given query person in each image. We also propose a hard positive mining scheme by using the contextual information of co-appearance that neighboring persons in one image tend to appear simultaneously in other images. The experimental results show that the proposed method achieves comparable performance to that of the state-of-the-art supervised person search methods, and furthermore outperforms the extended unsupervised person re-identification methods on the benchmark person search datasets.
翻译:现有个人搜索方法使用个人身份附加说明的标签,以监督的方式对深层网络进行培训,这需要大量的时间和人力标识。在本文中,我们首先引入一个新的人员搜索框架,能够在没有个人身份标签的情况下对网络进行培训,并提出高效的、不受监督的集群方法,以替代使用附加说明的个人身份标签的监督程序。具体地说,我们建议基于以下独特性特征的硬性负面采矿计划,即每个图像中只有一个人与给定的查询人具有相同身份。我们还提出一个硬性正面采矿计划,即使用共同发现的背景信息,即一个图像中的相邻人往往同时出现在其他图像中。实验结果显示,拟议方法的性能与最先进的受监督人搜索方法的性能相当,而且超过了基准人搜索数据集上扩展的未经监督的人再识别方法。