ResMatching: Noise-Resilient Computational Super-Resolution via Guided Conditional Flow Matching
Anirban Ray, Vera Galinova, Florian Jug

TL;DR
ResMatching introduces a noise-resilient, data-driven super-resolution method using guided conditional flow matching, improving image quality and uncertainty estimation in fluorescence microscopy.
Contribution
It presents a novel CSR approach that leverages guided conditional flow matching to learn better priors, especially effective with noisy low-resolution images.
Findings
Achieves the best trade-off between data fidelity and perceptual realism.
Effective in noisy conditions where strong priors are hard to learn.
Provides calibrated pixel-wise uncertainty estimates.
Abstract
Computational Super-Resolution (CSR) in fluorescence microscopy has, despite being an ill-posed problem, a long history. At its very core, CSR is about finding a prior that can be used to extrapolate frequencies in a micrograph that have never been imaged by the image-generating microscope. It stands to reason that, with the advent of better data-driven machine learning techniques, stronger prior can be learned and hence CSR can lead to better results. Here, we present ResMatching, a novel CSR method that uses guided conditional flow matching to learn such improved data-priors. We evaluate ResMatching on 4 diverse biological structures from the BioSR dataset and compare its results against 7 baselines. ResMatching consistently achieves competitive results, demonstrating in all cases the best trade-off between data fidelity and perceptual realism. We observe that CSR using ResMatching is…
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