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Mutli-scale Training for Image Super-Resolution

This repository contains the code used to produce the results of the publications: Möller et al., A Super-Resolution Training Paradigm Based on Low-Resolution Data Only to Surpass the Technical Limits of STEM and STM Microscopy, 2023 (2023 CVPR Workshop on Computer Vision for Microscopy Image Analysis )

and

A Lightweight Image Super-Resolution Transformer Trained on Low-Resolution Images Only (2025 International Neural Network Society Workshop on Deep Learning Innovations and Applications)