Convolutional neural network identification of galaxy post-mergers in UNIONS using IllustrisTNG
Robert W. Bickley, Connor Bottrell, Maan H. Hani, Sara L. Ellison,, Hossen Teimoorinia, Kwang Moo Yi, Scott Wilkinson, Stephen Gwyn, Michael J., Hudson

TL;DR
This study develops a convolutional neural network to identify galaxy post-mergers in large surveys, demonstrating high accuracy and outperforming traditional methods, with implications for future astronomical data analysis.
Contribution
The paper introduces a CNN trained on simulated galaxy images to classify post-mergers, achieving superior accuracy and purity compared to traditional automated and human classification methods.
Findings
CNN achieves 88% classification accuracy.
CNN outperforms Gini-M20 and asymmetry methods.
Hybrid human-automated approach may optimize merger classification.
Abstract
The Canada-France Imaging Survey (CFIS) will consist of deep, high-resolution r-band imaging over ~5000 square degrees of the sky, representing a first-rate opportunity to identify recently-merged galaxies. Due to the large number of galaxies in CFIS, we investigate the use of a convolutional neural network (CNN) for automated merger classification. Training samples of post-merger and isolated galaxy images are generated from the IllustrisTNG simulation processed with the observational realism code RealSim. The CNN's overall classification accuracy is 88 percent, remaining stable over a wide range of intrinsic and environmental parameters. We generate a mock galaxy survey from IllustrisTNG in order to explore the expected purity of post-merger samples identified by the CNN. Despite the CNN's good performance in training, the intrinsic rarity of post-mergers leads to a sample that is…
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