CVDec 20, 2021

Lite Vision Transformer with Enhanced Self-Attention

arXiv:2112.10809v1163 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses performance issues in lightweight vision transformers for mobile deployment, representing an incremental improvement.

The paper tackles inconsistent dense predictions in lightweight vision transformers by proposing LVT with two enhanced self-attention mechanisms, achieving improved performance on ImageNet, ADE20K, and COCO benchmarks.

Despite the impressive representation capacity of vision transformer models, current light-weight vision transformer models still suffer from inconsistent and incorrect dense predictions at local regions. We suspect that the power of their self-attention mechanism is limited in shallower and thinner networks. We propose Lite Vision Transformer (LVT), a novel light-weight transformer network with two enhanced self-attention mechanisms to improve the model performances for mobile deployment. For the low-level features, we introduce Convolutional Self-Attention (CSA). Unlike previous approaches of merging convolution and self-attention, CSA introduces local self-attention into the convolution within a kernel of size 3x3 to enrich low-level features in the first stage of LVT. For the high-level features, we propose Recursive Atrous Self-Attention (RASA), which utilizes the multi-scale context when calculating the similarity map and a recursive mechanism to increase the representation capability with marginal extra parameter cost. The superiority of LVT is demonstrated on ImageNet recognition, ADE20K semantic segmentation, and COCO panoptic segmentation. The code is made publicly available.

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