SPoT: Subpixel Placement of Tokens in Vision Transformers
Abstract
Vision Transformers naturally accommodate sparsity, yet standard tokenization methods confine features to discrete patch grids. This constraint prevents models from fully exploiting sparse regimes, forcing awkward compromises. We propose Subpixel Placement of Tokens (SPoT), a novel tokenization strategy that positions tokens continuously within images, effectively sidestepping grid-based limitations. With our proposed oracle-guided search, we uncover substantial performance gains achievable with ideal subpixel token positioning, drastically reducing the number of tokens necessary for accurate predictions during inference. SPoT provides a new direction for flexible, efficient, and interpretable ViT architectures, redefining sparsity as a strategic advantage rather than an imposed limitation.
Cite
Text
Hjelkrem-Tan et al. "SPoT: Subpixel Placement of Tokens in Vision Transformers." Transactions on Machine Learning Research, 2026.Markdown
[Hjelkrem-Tan et al. "SPoT: Subpixel Placement of Tokens in Vision Transformers." Transactions on Machine Learning Research, 2026.](https://mlanthology.org/tmlr/2026/hjelkremtan2026tmlr-spot/)BibTeX
@article{hjelkremtan2026tmlr-spot,
title = {{SPoT: Subpixel Placement of Tokens in Vision Transformers}},
author = {Hjelkrem-Tan, Martine and Aasan, Marius and Arteaga, Gabriel Y. and Rivera, Adín Ramírez},
journal = {Transactions on Machine Learning Research},
year = {2026},
url = {https://mlanthology.org/tmlr/2026/hjelkremtan2026tmlr-spot/}
}