davide-coccomini/GAN-Universe
This repository contains part of the code used to make the images visible in the article "How does an AI Imagine the Universe?" published on Towards Data Science.
This project helps researchers and artists create unique, AI-generated images of celestial bodies and galaxies. You provide a dataset of existing astronomical images, and the AI learns to generate new, realistic-looking cosmic scenes. This is useful for astronomers, science communicators, or digital artists interested in visualizing hypothetical or abstract cosmic phenomena.
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Use this if you want to generate novel images of celestial bodies or entire cosmic landscapes using artificial intelligence, starting from a collection of real astronomical photos.
Not ideal if you need to analyze specific astronomical data or perform precise scientific simulations of the universe.
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Oct 07, 2021
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