TL;DR
SuperF introduces a novel neural implicit field method for multi-image super-resolution that jointly optimizes frame alignment and super-resolution without requiring high-resolution training data.
Contribution
It leverages coordinate-based neural networks to improve multi-image super-resolution by directly optimizing sub-pixel alignment and super-resolution in a test-time setting.
Findings
Achieves up to 8x upsampling on satellite and handheld camera images.
Outperforms related INR-based burst fusion methods.
Does not depend on high-resolution training data.
Abstract
High-resolution imagery is often hindered by limitations in sensor technology, atmospheric conditions, and costs. Such challenges occur in satellite remote sensing, but also with handheld cameras, such as our smartphones. Hence, super-resolution aims to enhance the image resolution algorithmically. Since single-image super-resolution requires solving an inverse problem, such methods must exploit strong priors, e.g. learned from high-resolution training data, or be constrained by auxiliary data, e.g. by a high-resolution guide from another modality. While qualitatively pleasing, such approaches often lead to "hallucinated" structures that do not match reality. In contrast, multi-image super-resolution (MISR) aims to improve the (optical) resolution by constraining the super-resolution process with multiple views taken with sub-pixel shifts. Here, we propose SuperF, a test-time…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
