Cross Modal Person Re-identification with Visual-Textual Queries

Ammarah Farooq, Muhammad Awais, J. Kittler, A. Akbari, S. S. Khalid
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引用次数: 5

Abstract

Classical person re-identification approaches assume that a person of interest has appeared across different cameras and can be queried by one of the existing images. However, in real-world surveillance scenarios, frequently no visual information will be available about the queried person. In such scenarios, a natural language description of the person by a witness will provide the only source of information for retrieval. In this work, person re-identification using both vision and language information is addressed under all possible gallery and query scenarios. A two stream deep convolutional neural network framework supervised by identity based cross entropy loss is presented. Canonical Correlation Analysis is performed to enhance the correlation between the two modalities in a joint latent embedding space. To investigate the benefits of the proposed approach, a new testing protocol under a multi modal ReID setting is proposed for the test split of the CUHK-PEDES and CUHK-SYSU benchmarks. The experimental results verify that the learnt visual representations are more robust and perform 20% better during retrieval as compared to a single modality system.
视觉文本查询的跨模态人物再识别
经典的人物再识别方法假设一个感兴趣的人出现在不同的摄像机中,并且可以通过现有的图像之一进行查询。然而,在现实世界的监视场景中,通常没有关于被查询人员的可视信息。在这种情况下,证人对该人的自然语言描述将为检索提供唯一的信息来源。在这项工作中,使用视觉和语言信息在所有可能的画廊和查询场景下进行人的重新识别。提出了一种基于同一性交叉熵损失监督的两流深度卷积神经网络框架。典型相关分析是为了在联合潜嵌入空间中增强两种模式之间的相关性。为了研究该方法的好处,本文提出了一种多模态ReID设置下的新测试协议,用于中大- pedes和中大- sysu基准的测试分割。实验结果证明,与单一模态系统相比,学习到的视觉表征具有更强的鲁棒性,在检索过程中性能提高20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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