2021
DOI: 10.48550/arxiv.2103.05985
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Multi-Pretext Attention Network for Few-shot Learning with Self-supervision

Abstract: Few-shot learning is an interesting and challenging study, which enables machines to learn from few samples like humans. Existing studies rarely exploit auxiliary information from large amount of unlabeled data. Self-supervised learning is emerged as an efficient method to utilize unlabeled data. Existing self-supervised learning methods always rely on the combination of geometric transformations for the single sample by augmentation, while seriously neglect the endogenous correlation information among differe… Show more

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