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📄 Abstract
Abstract: Recovering high-fidelity images of the night sky from blurred observations is
a fundamental problem in astronomy, where traditional methods typically fall
short. In ground-based astronomy, combining multiple exposures to enhance
signal-to-noise ratios is further complicated by variations in the point-spread
function caused by atmospheric turbulence. In this work, we present a
self-supervised multi-frame method, based on deep image priors, for denoising,
deblurring, and coadding ground-based exposures. Central to our approach is a
carefully designed convolutional neural network that integrates information
across multiple observations and enforces physically motivated constraints. We
demonstrate the method's potential by processing Hyper Suprime-Cam exposures,
yielding promising preliminary results with sharper restored images.