CVJul 29, 2021

Rethinking and Improving Relative Position Encoding for Vision Transformer

arXiv:2107.14222v1432 citationsHas Code
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This work addresses the need for better position encoding in computer vision tasks, offering a simple and effective solution for vision transformer models.

The paper tackles the problem of improving relative position encoding for vision transformers, proposing new methods (iRPE) that achieve up to 1.5% top-1 accuracy improvement on ImageNet and 1.3% mAP improvement on COCO over baseline models.

Relative position encoding (RPE) is important for transformer to capture sequence ordering of input tokens. General efficacy has been proven in natural language processing. However, in computer vision, its efficacy is not well studied and even remains controversial, e.g., whether relative position encoding can work equally well as absolute position? In order to clarify this, we first review existing relative position encoding methods and analyze their pros and cons when applied in vision transformers. We then propose new relative position encoding methods dedicated to 2D images, called image RPE (iRPE). Our methods consider directional relative distance modeling as well as the interactions between queries and relative position embeddings in self-attention mechanism. The proposed iRPE methods are simple and lightweight. They can be easily plugged into transformer blocks. Experiments demonstrate that solely due to the proposed encoding methods, DeiT and DETR obtain up to 1.5% (top-1 Acc) and 1.3% (mAP) stable improvements over their original versions on ImageNet and COCO respectively, without tuning any extra hyperparameters such as learning rate and weight decay. Our ablation and analysis also yield interesting findings, some of which run counter to previous understanding. Code and models are open-sourced at https://github.com/microsoft/Cream/tree/main/iRPE.

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