2021
DOI: 10.48550/arxiv.2112.02825
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Clue Me In: Semi-Supervised FGVC with Out-of-Distribution Data

Abstract: Despite great strides made on fine-grained visual classification (FGVC), current methods are still heavily reliant on fully-supervised paradigms where ample expert labels are called for. Semi-supervised learning (SSL) techniques, acquiring knowledge from unlabeled data, provide a considerable means forward and have shown great promise for coarse-grained problems. However, exiting SSL paradigms mostly assume in-distribution (i.e., category-aligned) unlabeled data, which hinders their effectiveness when repropos… Show more

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