Catalog-free modeling of galaxy types in deep images: Massive dimensional reduction with neural networks
Florian Livet, Tom Charnock, Damien Le Borgne, Val\'erie de Lapparent

TL;DR
This paper introduces a neural network-based, catalog-free method for modeling galaxy types in deep images, enabling unbiased inference of luminosity function parameters directly from images.
Contribution
It develops a likelihood-free inference approach using neural networks to analyze multiband deep images without relying on galaxy catalogs, reducing biases and improving robustness.
Findings
Successfully constrains galaxy luminosity function parameters.
Demonstrates robustness and accuracy on synthetic deep fields.
Results are consistent with traditional catalog-based methods.
Abstract
Current models of galaxy evolution are constrained by the analysis of catalogs containing the flux and size of galaxies extracted from multiband deep fields carrying inevitable observational and extraction-related biases which can be highly correlated. In practice, taking all of these effects simultaneously into account is difficult, and derived models are inevitably biased. To address this issue, we use robust likelihood-free methods for the inference of luminosity function parameters, made possible via massive compression of multiband images using artificial neural networks. This technique makes the use of catalogs unnecessary when comparing observed and simulated multiband deep fields and constraining model parameters. A forward modeling approach generates galaxies of multiple types depending on luminosity function parameters and paints them on photometric multiband deep fields…
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