English

Self-supervised prior learning improves structured illumination microscopy resolution

Optics 2025-12-04 v2

Abstract

Structured illumination microscopy (SIM) is a wide-field super-resolution technique normally limited to roughly twice the diffraction-limited resolution (100\approx 100--200200~nm). Surpassing this bound is a classic ill-posed inverse problem: recovering high-frequency structure from band-limited raw data. We introduce SIMFormer, a fully blind SIM reconstruction framework that learns a powerful, data-driven prior directly from raw images via self-supervision. This learned prior regularizes the solution and enables reliable extrapolation beyond the optical transfer function cutoff, yielding an effective resolution of approximately 45~nm. We validate SIMFormer on synthetic data and the BioSR dataset, where it resolves features such as flattened endoplasmic reticulum lipid bilayers previously reported to require STORM-level resolution. A self-distilled variant, SIMFormer+, further improves noise robustness while preserving high resolution at extremely low photon counts. These results show that learned priors can substantially extend SIM resolution and robustness, enabling rapid, large-scale imaging with STORM-level detail.

Keywords

Cite

@article{arxiv.2511.22053,
  title  = {Self-supervised prior learning improves structured illumination microscopy resolution},
  author = {Ze-Hao Wang and Tong-Tian Weng and Long-Kun Shan and Xiang-Dong Chen and Guang-Can Guo and Fang-Wen Sun and Tian-Long Chen},
  journal= {arXiv preprint arXiv:2511.22053},
  year   = {2025}
}
R2 v1 2026-07-01T07:57:24.632Z