2022
DOI: 10.48550/arxiv.2203.03483
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Towards Unbiased Multi-label Zero-Shot Learning with Pyramid and Semantic Attention

Abstract: Multi-label zero-shot learning extends conventional single-label zero-shot learning to a more realistic scenario that aims at recognizing multiple unseen labels of classes for each input sample. Existing works usually exploit attention mechanism to generate the correlation among different labels. However, most of them are usually biased on several major classes while neglect most of the minor classes with the same importance in input samples, and may thus result in overly diffused attention maps that cannot su… Show more

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