Recently, the Vision Transformer (ViT), which applied the transformer structure to the image classification task, has outperformed convolutional neural networks. However, the high performance of the ViT results from pre-training using a large-size dataset such as JFT-300M, and its dependence on a large dataset is interpreted as due to low locality inductive bias. This paper proposes Shifted Patch Tokenization (SPT) and Locality Self-Attention (LSA), which effectively solve the lack of locality inductive bias and enable it to learn from scratch even on small-size datasets. Moreover, SPT and LSA are generic and effective add-on modules that are easily applicable to various ViTs. Experimental results show that when both SPT and LSA were applied to the ViTs, the performance improved by an average of 2.96% in Tiny-ImageNet, which is a representative small-size dataset. Especially, Swin Transformer achieved an overwhelming performance improvement of 4.08% thanks to the proposed SPT and LSA.
Vision Transformer for Small-Size Datasets
Shifted Patch Tokenization (SPT) and Locality Self-Attention (LSA) improve the performance of Vision Transformers (ViTs) on small datasets by addressing their lack of locality inductive bias.
- Year
- 2021
- Venue
- arXiv 2021
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2112.13492ARXIV-DEFAULT
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