Transferring a semantic representation for person re-identification and search

Zhiyuan Shi, Timothy M. Hospedales, T. Xiang
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引用次数: 210

Abstract

Learning semantic attributes for person re-identification and description-based person search has gained increasing interest due to attributes' great potential as a pose and view-invariant representation. However, existing attribute-centric approaches have thus far underperformed state-of-the-art conventional approaches. This is due to their nonscalable need for extensive domain (camera) specific annotation. In this paper we present a new semantic attribute learning approach for person re-identification and search. Our model is trained on existing fashion photography datasets - either weakly or strongly labelled. It can then be transferred and adapted to provide a powerful semantic description of surveillance person detections, without requiring any surveillance domain supervision. The resulting representation is useful for both unsupervised and supervised person re-identification, achieving state-of-the-art and near state-of-the-art performance respectively. Furthermore, as a semantic representation it allows description-based person search to be integrated within the same framework.
转换语义表示用于人员再识别和搜索
由于属性作为姿态和视图不变表示的巨大潜力,学习语义属性用于人的再识别和基于描述的人搜索越来越受到关注。然而,现有的以属性为中心的方法迄今为止表现不如最先进的传统方法。这是由于它们对广泛的领域(相机)特定注释的不可伸缩需求。本文提出了一种新的语义属性学习方法,用于人物再识别和搜索。我们的模型是在现有的时尚摄影数据集上训练的——要么弱标记,要么强标记。然后,它可以转换和调整为提供监视人员检测的强大语义描述,而不需要任何监视域监督。由此产生的表示对于无监督和有监督的人员再识别都很有用,分别实现了最先进和接近最先进的性能。此外,作为语义表示,它允许在同一框架内集成基于描述的人员搜索。
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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