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This paper proposes Attribute Attention Network (AANet), a new architecture that integrates person attributes and attribute attention maps into a classification framework to solve the person re-identification (re-ID) problem. Many person re-ID models typically employ semantic cues such as body parts or human pose to improve the re-ID performance. Attribute information, however, is often not utilized. The proposed AANet leverages on a baseline model that uses body parts and integrates the key attribute information in an unified learning framework. The AANet consists of a global person ID task, a part detection task and a crucial attribute detection task. By estimating the class responses of individual attributes and combining them to form the attribute attention map (AAM), a very strong discriminatory representation is constructed. The proposed AANet outperforms the best state-of-the-art method Sun₂018ECCV using ResNet-50 by 3. 36\% in mAP and 3. 12\% in Rank-1 accuracy on DukeMTMC-reID dataset. On Market1501 dataset, AANet achieves 92. 38\% mAP and 95. 10\% Rank-1 accuracy with re-ranking, outperforming~kalayeh2018human, another state of the art method using ResNet-152, by 1. 42\% in mAP and 0. 47\% in Rank-1 accuracy. In addition, AANet can perform person attribute prediction (e. g. , gender, hair length, clothing length etc. ), and localize the attributes in the query image.
Tay et al. (Sat,) studied this question.
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