CVAILGJun 3, 2021

DynamicViT: Efficient Vision Transformers with Dynamic Token Sparsification

arXiv:2106.02034v21100 citationsHas Code
AI Analysis

This addresses computational bottlenecks for vision transformer users, offering a hardware-friendly method to enhance efficiency without significant accuracy loss, though it is incremental as it builds on existing transformer architectures.

The paper tackles the inefficiency of vision transformers by proposing a dynamic token sparsification framework that prunes redundant tokens based on input, reducing FLOPs by 31-37% and improving throughput by over 40% with less than 0.5% accuracy drop on ImageNet.

Attention is sparse in vision transformers. We observe the final prediction in vision transformers is only based on a subset of most informative tokens, which is sufficient for accurate image recognition. Based on this observation, we propose a dynamic token sparsification framework to prune redundant tokens progressively and dynamically based on the input. Specifically, we devise a lightweight prediction module to estimate the importance score of each token given the current features. The module is added to different layers to prune redundant tokens hierarchically. To optimize the prediction module in an end-to-end manner, we propose an attention masking strategy to differentiably prune a token by blocking its interactions with other tokens. Benefiting from the nature of self-attention, the unstructured sparse tokens are still hardware friendly, which makes our framework easy to achieve actual speed-up. By hierarchically pruning 66% of the input tokens, our method greatly reduces 31%~37% FLOPs and improves the throughput by over 40% while the drop of accuracy is within 0.5% for various vision transformers. Equipped with the dynamic token sparsification framework, DynamicViT models can achieve very competitive complexity/accuracy trade-offs compared to state-of-the-art CNNs and vision transformers on ImageNet. Code is available at https://github.com/raoyongming/DynamicViT

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