Lukeli0425/Galaxy-Deconv
[MNRAS] Galaxy Image Deconvolution for Weak Gravitational Lensing with Unrolled Plug-and-Play ADMM
This project helps astronomers and astrophysicists process galaxy images to better understand weak gravitational lensing. It takes blurry galaxy images, often distorted by atmospheric effects or telescope optics, and outputs sharper, deconvolved images. This allows researchers to more accurately measure the subtle distortions caused by gravitational lensing, which is crucial for studying dark matter and the universe's large-scale structure.
Use this if you are an astronomer or researcher working with galaxy image data and need to deconvolve them to improve the accuracy of weak gravitational lensing measurements.
Not ideal if your primary goal is general astronomical image processing unrelated to weak gravitational lensing or if you require real-time image analysis.
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63
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7
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Jan 29, 2026
Commits (30d)
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