Metadata, Wavelet, and Time Aware Diffusion Models for Satellite Image Super Resolution
arXiv cs.CV / 5/6/2026
💬 OpinionTools & Practical UsageModels & Research
Key Points
- The paper introduces MWT-Diff, a satellite image super-resolution framework that integrates latent diffusion with wavelet transforms to better overcome sensor spatial/temporal limits and high revisit costs.
- Its core component, the metadata-, wavelet-, and time-aware MWT-Encoder, produces embeddings capturing metadata attributes, multi-scale frequency information, and temporal relationships.
- These embeddings guide hierarchical diffusion steps that progressively reconstruct high-resolution imagery while preserving textures, boundary discontinuities, and important high-frequency spectral content.
- Experiments across multiple datasets show MWT-Diff achieves favorable results over recent methods using perceptual quality metrics such as FID and LPIPS.
- The authors provide an open-source implementation at the linked GitHub repository.
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