Multi-Memory Matching for Unsupervised Visible-Infrared Person Re-Identification
CoRR(2024)
摘要
Unsupervised visible-infrared person re-identification (USL-VI-ReID) is a
promising yet challenging retrieval task. The key challenges in USL-VI-ReID are
to effectively generate pseudo-labels and establish pseudo-label
correspondences across modalities without relying on any prior annotations.
Recently, clustered pseudo-label methods have gained more attention in
USL-VI-ReID. However, previous methods fell short of fully exploiting the
individual nuances, as they simply utilized a single memory that represented an
identity to establish cross-modality correspondences, resulting in ambiguous
cross-modality correspondences. To address the problem, we propose a
Multi-Memory Matching (MMM) framework for USL-VI-ReID. We first design a
Cross-Modality Clustering (CMC) module to generate the pseudo-labels through
clustering together both two modality samples. To associate cross-modality
clustered pseudo-labels, we design a Multi-Memory Learning and Matching (MMLM)
module, ensuring that optimization explicitly focuses on the nuances of
individual perspectives and establishes reliable cross-modality
correspondences. Finally, we design a Soft Cluster-level Alignment (SCA) module
to narrow the modality gap while mitigating the effect of noise pseudo-labels
through a soft many-to-many alignment strategy. Extensive experiments on the
public SYSU-MM01 and RegDB datasets demonstrate the reliability of the
established cross-modality correspondences and the effectiveness of our MMM.
The source codes will be released.
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