Green Hierarchical Vision Transformer for Masked Image Modeling
Abstract
We present an efficient approach for Masked Image Modeling (MIM) with hierarchical Vision Transformers (ViTs), allowing the hierarchical ViTs to discard masked patches and operate only on the visible ones. Our approach consists of three key designs. First, for window attention, we propose a Group Window Attention scheme following the Divide-and-Conquer strategy. To mitigate the quadratic complexity of the self-attention w.r.t. the number of patches, group attention encourages a uniform partition that visible patches within each local window of arbitrary size can be grouped with equal size, where masked self-attention is then performed within each group. Second, we further improve the grouping strategy via the Dynamic Programming algorithm to minimize the overall computation cost of the attention on the grouped patches. Third, as for the convolution layers, we convert them to the Sparse Convolution that works seamlessly with the sparse data, i.e., the visible patches in MIM. As a result, MIM can now work on most, if not all, hierarchical ViTs in a green and efficient way. For example, we can train the hierarchical ViTs, e.g., Swin Transformer and Twins Transformer, about 2.7$\times$ faster and reduce the GPU memory usage by 70%, while still enjoying competitive performance on ImageNet classification and the superiority on downstream COCO object detection benchmarks.
Cite
Text
Huang et al. "Green Hierarchical Vision Transformer for Masked Image Modeling." Neural Information Processing Systems, 2022.Markdown
[Huang et al. "Green Hierarchical Vision Transformer for Masked Image Modeling." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/huang2022neurips-green/)BibTeX
@inproceedings{huang2022neurips-green,
title = {{Green Hierarchical Vision Transformer for Masked Image Modeling}},
author = {Huang, Lang and You, Shan and Zheng, Mingkai and Wang, Fei and Qian, Chen and Yamasaki, Toshihiko},
booktitle = {Neural Information Processing Systems},
year = {2022},
url = {https://mlanthology.org/neurips/2022/huang2022neurips-green/}
}