Deep learning predictions of galaxy merger stage and the importance of observational realism
Connor Bottrell (1), Maan H. Hani (1), Hossen Teimoorinia (2,1), Sara, L. Ellison (1), Jorge Moreno (3,4,5), Paul Torrey (6), Christopher C. Hayward, (7), Mallory Thorp (1), Luc Simard (2), and Lars Hernquist (4) ((1), Department of Physics, Astronomy, University of Victoria

TL;DR
This study evaluates how the realism of simulated galaxy images affects the accuracy of CNN-based galaxy merger classification, emphasizing the importance of observational realism over radiative transfer details.
Contribution
It demonstrates that training on fully realistic images significantly improves merger classification accuracy, reducing the need for complex radiative transfer simulations.
Findings
Fully realistic training images yield 87.1% accuracy.
Realism level in training data outweighs radiative transfer inclusion.
Color insensitivity in networks only mildly reduces performance.
Abstract
Machine learning is becoming a popular tool to quantify galaxy morphologies and identify mergers. However, this technique relies on using an appropriate set of training data to be successful. By combining hydrodynamical simulations, synthetic observations and convolutional neural networks (CNNs), we quantitatively assess how realistic simulated galaxy images must be in order to reliably classify mergers. Specifically, we compare the performance of CNNs trained with two types of galaxy images, stellar maps and dust-inclusive radiatively transferred images, each with three levels of observational realism: (1) no observational effects (idealized images), (2) realistic sky and point spread function (semi-realistic images), (3) insertion into a real sky image (fully realistic images). We find that networks trained on either idealized or semi-real images have poor performance when applied to…
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