2022
DOI: 10.48550/arxiv.2204.13091
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Attention Consistency on Visual Corruptions for Single-Source Domain Generalization

Abstract: Generalizing visual recognition models trained on a single distribution to unseen input distributions (i.e. domains) requires making them robust to superfluous correlations in the training set. In this work, we achieve this goal by altering the training images to simulate new domains and imposing consistent visual attention across the different views of the same sample. We discover that the first objective can be simply and effectively met through visual corruptions. Specifically, we alter the content of the t… Show more

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