Open-World Group Retrieval with Ambiguity Removal: A Benchmark

Ling Mei, J. Lai, Zhanxiang Feng, Xiaohua Xie
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引用次数: 2

Abstract

Group retrieval has attracted plenty of attention in artificial intelligence, traditional group retrieval researches assume that members in a group are unique and do not change under different cameras. However, the assumption may not be met for practical situations such as open-world and group-ambiguity scenarios. This paper tackles an important yet non-studied problem: re-identifying changing groups of people under the open-world and group-ambiguity scenarios in different camera fields. The open-world scenario considers that there are probably non-target people for the probe set appear in the searching gallery, while the group-ambiguity scenario means the group members may change. The open-world and group-ambiguity issue is very challenging for the existing methods because the changing of group members results in dramatic visual variations. Nevertheless, as far as we know, the existing literature lacks benchmarks which target on coping with this issue. In this paper, we propose a new group retrieval dataset named OWGA-Campus to consider these challenges. Moreover, we propose a person-to-group similarity matching based ambiguity removal (P2GSM-AR) method to solve these problems and realize the intention of group retrieval. Experimental results on OWGA-Campus dataset demonstrate the effectiveness and robustness of the proposed P2GSM-AR approach in improving the performance of the state-of-the-art feature extraction methods of person re-id towards the open-world and ambiguous group retrieval task.
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基于歧义去除的开放世界组检索:一个基准
群体检索在人工智能领域受到广泛关注,传统的群体检索研究假设群体中的成员是唯一的,在不同的摄像机下不会发生变化。然而,对于开放世界和群体模糊场景等实际情况,该假设可能不满足。本文解决了一个重要但尚未被研究的问题:在开放世界和群体模糊场景下,重新识别不同摄像场中不断变化的人群。开放世界场景考虑到搜索库中可能会出现探测集的非目标人,而群体模糊场景则意味着群体成员可能会发生变化。开放世界和群体模糊问题对现有的方法来说是非常具有挑战性的,因为群体成员的变化会导致巨大的视觉变化。然而,据我们所知,现有文献缺乏针对应对这一问题的基准。在本文中,我们提出了一个新的组检索数据集OWGA-Campus来考虑这些挑战。在此基础上,提出了一种基于人对群体相似性匹配的模糊去除(P2GSM-AR)方法来解决这些问题,实现群体检索的目的。在OWGA-Campus数据集上的实验结果表明,本文提出的P2GSM-AR方法能够有效地改善目前最先进的人物身份特征提取方法在开放世界和模糊群体检索任务中的性能。
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