Deblending Galaxies with Generative Adversarial Networks
Shoubaneh Hemmati, Eric Huff, Hooshang Nayyeri, Agn\`es Fert\'e, Peter, Melchior, Bahram Mobasher, Jason Rhodes, Abtin Shahidi, Harry Teplitz

TL;DR
This paper develops and applies generative adversarial networks to improve galaxy image deblending, significantly enhancing resolution and blend detection, which benefits precision cosmology by reducing systematic errors.
Contribution
The authors introduce a modified GAN architecture for galaxy image super-resolution and deblending, achieving notable improvements over existing methods and extending to multi-wavelength data.
Findings
Reduced blending fraction from 90% to 50% in ground-based images.
Achieved tenfold improvement in photometry accuracy for blended objects.
Enhanced blend detection by 10% with multi-wavelength GAN.
Abstract
Deep generative models including generative adversarial networks (GANs) are powerful unsupervised tools in learning the distributions of data sets. Building a simple GAN architecture in PyTorch and training on the CANDELS data set, we generate galaxy images with the Hubble Space Telescope resolution starting from a noise vector. We proceed by modifying the GAN architecture to improve the Subaru Hyper Suprime-Cam ground-based images by increasing their resolution to the HST resolution. We use the super resolution GAN on a large sample of blended galaxies which we create using CANDELS cutouts. In our simulated blend sample, would unrecognizably be blended even in the HST resolution cutouts. In the HSC-like cutouts this fraction rises to . With our modified GAN we can lower this value to . We quantify the blending fraction in the high, low and GAN…
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