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arxiv: 2112.10453 · v2 · pith:V7XSEE4I · submitted 2021-12-20 · cs.CV

Learning with Label Noise for Image Retrieval by Selecting Interactions

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classification cs.CV
keywords imageinteractionsnoiseretrievalnoisylabelslearningteacher-based
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Learning with noisy labels is an active research area for image classification. However, the effect of noisy labels on image retrieval has been less studied. In this work, we propose a noise-resistant method for image retrieval named Teacher-based Selection of Interactions, T-SINT, which identifies noisy interactions, ie. elements in the distance matrix, and selects correct positive and negative interactions to be considered in the retrieval loss by using a teacher-based training setup which contributes to the stability. As a result, it consistently outperforms state-of-the-art methods on high noise rates across benchmark datasets with synthetic noise and more realistic noise.

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