Handheld Burst Super-Resolution Meets Multi-Exposure Satellite Imagery
About
Image resolution is an important criterion for many applications based on satellite imagery. In this work, we adapt a state-of-the-art kernel regression technique for smartphone camera burst super-resolution to satellites. This technique leverages the local structure of the image to optimally steer the fusion kernels, limiting blur in the final high-resolution prediction, denoising the image, and recovering details up to a zoom factor of 2. We extend this approach to the multi-exposure case to predict from a sequence of multi-exposure low-resolution frames a high-resolution and noise-free one. Experiments on both single and multi-exposure scenarios show the merits of the approach. Since the fusion is learning-free, the proposed method is ensured to not hallucinate details, which is crucial for many remote sensing applications.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-image Super-resolution | SatSynthBurst | PSNR33.46 | 18 | |
| Multi-image Super-resolution | SyntheticBurst | PSNR27.02 | 18 | |
| Multi-image Super-resolution | SyntheticBurst (test) | PSNR26.46 | 5 | |
| Multi-image Super-resolution | SatSynthBurst (test) | PSNR27.7 | 5 |