DIPLI: Deep Image Prior Lucky Imaging for Blind Astronomical Image Restoration
Journal:
arXiv
Published Date:
Mar 20, 2025
Abstract
Contemporary image restoration and super-resolution techniques effectively
harness deep neural networks, markedly outperforming traditional methods.
However, astrophotography presents unique challenges for deep learning due to
limited training data. This work explores hybrid strategies, such as the Deep
Image Prior (DIP) model, which facilitates blind training but is susceptible to
overfitting, artifact generation, and instability when handling noisy images.
We propose enhancements to the DIP model's baseline performance through several
advanced techniques. First, we refine the model to process multiple frames
concurrently, employing the Back Projection method and the TVNet model. Next,
we adopt a Markov approach incorporating Monte Carlo estimation, Langevin
dynamics, and a variational input technique to achieve unbiased estimates with
minimal variance and counteract overfitting effectively. Collectively, these
modifications reduce the likelihood of noise learning and mitigate loss
function fluctuations during training, enhancing result stability. We validated
our algorithm across multiple image sets of astronomical and celestial objects,
achieving performance that not only mitigates limitations of Lucky Imaging, a
classical computer vision technique that remains a standard in astronomical
image reconstruction but surpasses the original DIP model, state of the art
transformer- and diffusion-based models, underscoring the significance of our
improvements.