Predicting resolved galaxy properties from photometric images using convolutional neural networks
Tobias Buck, Steffen Wolf

TL;DR
This paper demonstrates that convolutional neural networks can accurately predict detailed galaxy property maps from multi-band photometric images, surpassing traditional methods and enabling high-resolution insights into galaxy characteristics.
Contribution
The study introduces a CNN-based method to infer pixel-level galaxy properties from photometric images, achieving higher resolution and accuracy than conventional spectroscopic techniques.
Findings
Reconstructed stellar and gas property maps with less than 20% scatter.
Galaxy morphology alone constrains properties better than 20%.
Method outperforms traditional mass-to-light ratio approaches.
Abstract
Multi-band images of galaxies reveal a huge amount of information about their morphology and structure. However, inferring properties of the underlying stellar populations such as age, metallicity or kinematics from those images is notoriously difficult. Traditionally such information is best extracted from expensive spectroscopic observations. Here we present the (PICASSSO) project and test the information content of photometric multi-band images of galaxies. We train a convolutional neural network on 27,558 galaxy image pairs to establish a connection between broad-band images and the underlying physical stellar and gaseous galaxy property maps. We test our machine learning (ML) algorithm with SDSS mock images for which uncertainties and systematics are exactly known. We show that multi-band galaxy images contain…
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Taxonomy
TopicsData Visualization and Analytics
