TL;DR
torchmfbd is an open-source, GPU-accelerated Python framework for multi-object multi-frame blind deconvolution in astronomical imaging, supporting advanced regularization and flexible PSF modeling for high-quality image restoration.
Contribution
It introduces torchmfbd, a flexible, GPU-accelerated MOMFBD code leveraging PyTorch with novel PSF parameterizations and regularization techniques for improved astronomical image restoration.
Findings
Efficient high-quality reconstructions of solar images.
GPU acceleration significantly reduces computation time.
Supports spatially variant PSFs and advanced regularization.
Abstract
Post-facto image restoration techniques are essential for improving the quality of ground-based astronomical observations, which are affected by atmospheric turbulence. Multi-object multi-frame blind deconvolution (MOMFBD) methods are widely used in solar physics to achieve diffraction-limited imaging. We present torchmfbd, a new open-source code for MOMFBD that leverages the PyTorch library to provide a flexible, GPU-accelerated framework for image restoration. The code is designed to handle spatially variant point spread functions (PSFs) and includes advanced regularization techniques. The code implements the MOMFBD method using a maximum a-posteriori estimation framework. It supports both wavefront-based and data-driven PSF parameterizations, including a novel experimental approach using non-negative matrix factorization. Regularization techniques, such as smoothness and sparsity…
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