Investigation on deep learning-based galaxy image translation models
Hengxin Ruan, Qiufan Lin, Shupei Chen, Yang Wang, Wei Zhang

TL;DR
This study evaluates deep learning models for galaxy image translation, focusing on their ability to preserve high-order physical information like spectroscopic redshift, revealing limitations and potential for scientific applications.
Contribution
It systematically assesses four deep learning models on galaxy images, highlighting their strengths and weaknesses in maintaining complex physical information during translation.
Findings
Models vary in preserving redshift information.
Cross-band peak fluxes contain meaningful redshift data.
Imperfect translations still retain useful information for some applications.
Abstract
Galaxy image translation is an important application in galaxy physics and cosmology. With deep learning-based generative models, image translation has been performed for image generation, data quality enhancement, information extraction, and generalized for other tasks such as deblending and anomaly detection. However, most endeavors on image translation primarily focus on the pixel-level and morphology-level statistics of galaxy images. There is a lack of discussion on the preservation of complex high-order galaxy physical information, which would be more challenging but crucial for studies that rely on high-fidelity image translation. Therefore, we investigated the effectiveness of generative models in preserving high-order physical information (represented by spectroscopic redshift) along with pixel-level and morphology-level information. We tested four representative models, i.e. a…
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