DeepGalaxy: Deducing the Properties of Galaxy Mergers from Images Using Deep Neural Networks
Maxwell X. Cai, Jeroen B\'edorf, Vikram A. Saletore, Valeriu Codreanu,, Damian Podareanu, Adel Chaibi, Penny X. Qian

TL;DR
DeepGalaxy is a deep learning framework that predicts physical properties of galaxy mergers from images, enabling rapid analysis without costly simulations.
Contribution
It introduces a novel encoder-decoder architecture combining autoencoders and classifiers for efficient galaxy merger analysis.
Findings
High scaling efficiency on supercomputers
Speedup factor of approximately 10^5 over traditional methods
Accurate predictions of galaxy merger properties from images
Abstract
Galaxy mergers, the dynamical process during which two galaxies collide, are among the most spectacular phenomena in the Universe. During this process, the two colliding galaxies are tidally disrupted, producing significant visual features that evolve as a function of time. These visual features contain valuable clues for deducing the physical properties of the galaxy mergers. In this work, we propose DeepGalaxy, a visual analysis framework trained to predict the physical properties of galaxy mergers based on their morphology. Based on an encoder-decoder architecture, DeepGalaxy encodes the input images to a compressed latent space , and determines the similarity of images according to the latent-space distance. DeepGalaxy consists of a fully convolutional autoencoder (FCAE) which generates activation maps at its 3D latent-space, and a variational autoencoder (VAE) which compresses…
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