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Test-time Adaptation for Cross-modal Retrieval with Query Shift

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The success of most existing cross-modal retrieval methods heavily relies on the assumption that the given queries follow the same distribution of the source domain. However, such an assumption is easily violated in real-world scenarios due to the complexity and diversity of queries, thus leading to the query shift problem. Specifically, query shift refers to the online query stream originating from the domain that follows a different distribution with the source one. In this paper, we observe that query shift would not only diminish the uniformity (namely, within-modality scatter) of the query modality but also amplify the gap between query and gallery modalities. Based on the observations, we propose a novel method dubbed Test-time adaptation for Cross-modal Retrieval (TCR). In brief, TCR employs a novel module to refine the query predictions (namely, retrieval results of the query) and a joint objective to prevent query shift from disturbing the common space, thus achieving online adaptation for the cross-modal retrieval models with query shift. Expensive experiments demonstrate the effectiveness of the proposed TCR against query shift. The code will be released upon acceptance.

Haobin Li, Peng Hu, Qianjun Zhang, Xi Peng, Xiting Liu, Mouxing Yang• 2024

Related benchmarks

TaskDatasetResultRank
Text-to-Video RetrievalMSVD
R@155.37
290
Text-to-Video RetrievalActivityNet
R@122.11
245
Text-to-Video RetrievalLSMDC (test)
R@527.53
245
Text-to-Video RetrievalMSVD (test)
R@147.46
211
Text-to-Video RetrievalLSMDC
R@116.82
181
Text-to-Video RetrievalMSRVTT
R@138
144
Video-to-Text retrievalActivityNet
R@10.1869
136
Video-to-Text retrievalMSVD
R@154.33
119
Video-to-Text retrievalLSMDC
R@116.82
92
Text-based Person SearchCUHK-PEDES
Recall@170.66
90
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