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  • title: Dynamic Grained Encoder for Vision Transformers
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            Dynamic Grained Encoder for Vision Transformers
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            Dynamic Grained Encoder for Vision Transformers

            Dec 6, 2021

            Speakers

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            Lin Song

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            Songyang Zhang

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            SL

            Song Liu

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            About

            Transformers, the de-facto standard for language modeling, have been recently applied for vision tasks. This paper introduces sparse queries for vision transformers to exploit the intrinsic spatial redundancy of natural images and save computational costs. Specifically, we propose a Dynamic Grained Encoder for vision transformers, which can adaptively assign a suitable number of queries to each spatial region. Thus it achieves a fine-grained representation in discriminative regions while keeping…

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