OpenSR-SRGAN: A Flexible Super-Resolution Framework for Multispectral Earth Observation Data
By: Simon Donike , Cesar Aybar , Julio Contreras and more
Potential Business Impact:
Makes satellite pictures clearer and sharper.
We present OpenSR-SRGAN, an open and modular framework for single-image super-resolution in Earth Observation. The software provides a unified implementation of SRGAN-style models that is easy to configure, extend, and apply to multispectral satellite data such as Sentinel-2. Instead of requiring users to modify model code, OpenSR-SRGAN exposes generators, discriminators, loss functions, and training schedules through concise configuration files, making it straightforward to switch between architectures, scale factors, and band setups. The framework is designed as a practical tool and benchmark implementation rather than a state-of-the-art model. It ships with ready-to-use configurations for common remote sensing scenarios, sensible default settings for adversarial training, and built-in hooks for logging, validation, and large-scene inference. By turning GAN-based super-resolution into a configuration-driven workflow, OpenSR-SRGAN lowers the entry barrier for researchers and practitioners who wish to experiment with SRGANs, compare models in a reproducible way, and deploy super-resolution pipelines across diverse Earth-observation datasets.
Similar Papers
SU-ESRGAN: Semantic and Uncertainty-Aware ESRGAN for Super-Resolution of Satellite and Drone Imagery with Fine-Tuning for Cross Domain Evaluation
CV and Pattern Recognition
Makes blurry satellite pictures clear and trustworthy.
PC-SRGAN: Physically Consistent Super-Resolution Generative Adversarial Network for General Transient Simulations
Image and Video Processing
Makes science pictures clearer and more real.
Super-Resolution Generative Adversarial Networks based Video Enhancement
CV and Pattern Recognition
Makes blurry videos sharp and clear.