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Mitigating Noisy Correspondence by Geometrical Structure Consistency Learning

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Noisy correspondence that refers to mismatches in cross-modal data pairs, is prevalent on human-annotated or web-crawled datasets. Prior approaches to leverage such data mainly consider the application of uni-modal noisy label learning without amending the impact on both cross-modal and intra-modal geometrical structures in multimodal learning. Actually, we find that both structures are effective to discriminate noisy correspondence through structural differences when being well-established. Inspired by this observation, we introduce a Geometrical Structure Consistency (GSC) method to infer the true correspondence. Specifically, GSC ensures the preservation of geometrical structures within and between modalities, allowing for the accurate discrimination of noisy samples based on structural differences. Utilizing these inferred true correspondence labels, GSC refines the learning of geometrical structures by filtering out the noisy samples. Experiments across four cross-modal datasets confirm that GSC effectively identifies noisy samples and significantly outperforms the current leading methods.

Zihua Zhao, Mengxi Chen, Tianjie Dai, Jiangchao Yao, Bo han, Ya Zhang, Yanfeng Wang• 2024

Related benchmarks

TaskDatasetResultRank
Text-to-Image RetrievalFlickr30K
R@160.1
460
Image-to-Text RetrievalFlickr30K
R@178.3
379
Text-to-Image RetrievalMS-COCO
R@590.6
79
Image-to-Text RetrievalMS-COCO
R@596.4
65
Image-to-Text RetrievalCC152K
R@142.1
48
Text-to-Image RetrievalCC152K
R@142.2
48
Image-to-Text RetrievalMS COCO 5K
R@10.589
46
Text-to-Image RetrievalMS COCO 5K
R@142
39
Image-to-Text RetrievalNUS-WIDE
R@142.9
12
Text-to-Image RetrievalNUS-WIDE
R@139.8
12
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