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DAPL: Integration of Positive and Negative Descriptions in Text-Based Person Search

About

Text-based person search (TBPS) aims to retrieve specific images of individuals from large datasets using textual descriptions. Existing TBPS methods focus primarily on identifying explicit positive attributes, often neglecting the critical role of negative descriptions. This oversight can lead to false positives, where images that should be excluded based on negative descriptions are incorrectly included, due to partial alignment with the positive criteria. To address this limitation, we propose the Dual Attribute Prompt Learning (DAPL) framework, which incorporates both positive and negative descriptions to improve the interpretative accuracy of vision-language models in TBPS tasks. DAPL combines Dual Image-Attribute Contrastive (DIAC) learning with Sensitive Image-Attribute Matching (SIAM) learning to enhance the detection of previously unseen attributes. Furthermore, to achieve a balance between coarse and fine-grained alignment of visual and textual embeddings, we introduce the Dynamic Token-wise Similarity (DTS) loss. This loss function refines the representation of both matching and non-matching descriptions at the token level, providing more precise and adaptable similarity assessments, and ultimately improving the accuracy of the matching process. Empirical results demonstrate that DAPL outperforms state-of-the-art methods, enhancing both precision and robustness in TBPS tasks.

Yuchuan Deng, Zhanpeng Hu, Zijie Xin, Chuang Deng, Qijun Zhao• 2024

Related benchmarks

TaskDatasetResultRank
Text-based Person SearchCUHK-PEDES (test)
Rank-180.05
171
Text-based Person SearchRSTPReid (test)
R@170.84
136
Text-based Person SearchICFG-PEDES (test)
R@171.18
109
Text-based Person SearchCUHK-PEDES
Recall@177.43
90
Text-based Person Re-identificationRSTPReid
Rank-1 Accuracy69.12
57
Text-based Person SearchICFG-PEDES
R@167.87
47
Text-based Person SearchICFG-PEDES to CUHK-PEDES I -> C (test)
R@145.34
16
Text-based Person SearchICFG-PEDES C -> I (test)
Recall@150.47
4
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