2022
DOI: 10.48550/arxiv.2201.01410
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Synthesizing Tensor Transformations for Visual Self-attention

Abstract: Self-attention shows outstanding competence in capturing long-range relationships while enhancing performance on vision tasks, such as image classification and image captioning. However, the self-attention module highly relies on the dot product multiplication and dimension alignment among query-key-value features, which cause two problems: (1) The dot product multiplication results in exhaustive and redundant computation. (2) Due to the visual feature map often appearing as a multi-dimensional tensor, reshapi… Show more

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