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Noisy Correspondence Learning with Self-Reinforcing Errors Mitigation

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Cross-modal retrieval relies on well-matched large-scale datasets that are laborious in practice. Recently, to alleviate expensive data collection, co-occurring pairs from the Internet are automatically harvested for training. However, it inevitably includes mismatched pairs, \ie, noisy correspondences, undermining supervision reliability and degrading performance. Current methods leverage deep neural networks' memorization effect to address noisy correspondences, which overconfidently focus on \emph{similarity-guided training with hard negatives} and suffer from self-reinforcing errors. In light of above, we introduce a novel noisy correspondence learning framework, namely \textbf{S}elf-\textbf{R}einforcing \textbf{E}rrors \textbf{M}itigation (SREM). Specifically, by viewing sample matching as classification tasks within the batch, we generate classification logits for the given sample. Instead of a single similarity score, we refine sample filtration through energy uncertainty and estimate model's sensitivity of selected clean samples using swapped classification entropy, in view of the overall prediction distribution. Additionally, we propose cross-modal biased complementary learning to leverage negative matches overlooked in hard-negative training, further improving model optimization stability and curbing self-reinforcing errors. Extensive experiments on challenging benchmarks affirm the efficacy and efficiency of SREM.

Zhuohang Dang, Minnan Luo, Chengyou Jia, Guang Dai, Xiaojun Chang, Jingdong Wang• 2023

Related benchmarks

TaskDatasetResultRank
Text-to-Image RetrievalFlickr30k (test)
Recall@161.2
423
Image-to-Text RetrievalFlickr30k (test)
R@179.5
370
Image-to-Text RetrievalMS-COCO 1K (test)
R@178.5
121
Image-to-Text RetrievalCC152K
R@140.9
48
Text-to-Image RetrievalCC152K
R@141.5
48
Image-Text RetrievalCC152K
Sum372.2
10
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