Mengzan Qi, Sixian Chan, Chen Hang, Guixu Zhang, Zhi Li
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引用次数: 0
摘要
可见-红外人体再识别旨在从不同的模态中检索特定的身份。为了缓解模态差异,以往的工作主要集中在对高层特征的分布进行对齐,而忽略了对细粒度信息的探索。在本文中,我们提出了一种新的细粒度信息探索网络(FIENet)来实现判别表示,进一步缓解模态差异。首先,我们提出了渐进特征聚合模块(PFAM)来逐步聚合中级特征,并提出了多感知交互模块(MPIM)来实现与不同感知的交互。此外,结合PFAM和MPIM,可以提取更细粒度的信息,这有利于FIENet在两种模式下有效地关注区分人体部位。其次,在特征中心方面,我们引入了身份引导中心损失(identity - guided center Loss, IGCL)来监督身份内和身份间信息的身份表示。最后,进行了大量的实验来证明我们的方法达到了最先进的性能。
Fine-grained Learning for Visible-Infrared Person Re-identification
Visible-Infrared Person Re-identification aims to retrieve specific identities from different modalities. In order to relieve the modality discrepancy, previous works mainly concentrate on aligning the distribution of high-level features, while disregarding the exploration of fine-grained information. In this paper, we propose a novel Fine-grained Information Exploration Network (FIENet) to implement discriminative representation, further alleviating the modality discrepancy. Firstly, we propose a Progressive Feature Aggregation Module (PFAM) to progressively aggregate mid-level features, and a Multi-Perception Interaction Module (MPIM) to achieve the interaction with diverse perceptions. Additionally, combined with PFAM and MPIM, more fine-grained information can be extracted, which is beneficial for FIENet to focus on discriminative human parts in both modalities effectively. Secondly, in terms of the feature center, we introduce an Identity-Guided Center Loss (IGCL) to supervise identity representation with intra-identity and inter-identity information. Finally, extensive experiments are conducted to demonstrate that our method achieves state-of-the-art performance.