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Handheld Burst Super-Resolution Meets Multi-Exposure Satellite Imagery

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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.

Jamy Lafenetre, Ngoc Long Nguyen, Gabriele Facciolo, Thomas Eboli• 2023

Related benchmarks

TaskDatasetResultRank
Multi-image Super-resolutionSatSynthBurst
PSNR33.46
18
Multi-image Super-resolutionSyntheticBurst
PSNR27.02
18
Multi-image Super-resolutionSyntheticBurst (test)
PSNR26.46
5
Multi-image Super-resolutionSatSynthBurst (test)
PSNR27.7
5
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