TL;DR
This paper demonstrates that score-based generative models, specifically DDPMs, can produce highly realistic galaxy images, enabling improved data augmentation, in-painting, and domain transfer for astronomical imaging.
Contribution
The study introduces the use of DDPMs for realistic galaxy image synthesis, outperforming other methods like GANs in image quality and enabling new applications in astronomy.
Findings
DDPMs produce sharper, more realistic galaxy images than GANs.
The method accurately replicates physical properties of galaxies.
Potential for in-painting and domain transfer in astronomical data.
Abstract
We show that a Denoising Diffusion Probabalistic Model (DDPM), a class of score-based generative model, can be used to produce realistic mock images that mimic observations of galaxies. Our method is tested with Dark Energy Spectroscopic Instrument (DESI) grz imaging of galaxies from the Photometry and Rotation curve OBservations from Extragalactic Surveys (PROBES) sample and galaxies selected from the Sloan Digital Sky Survey. Subjectively, the generated galaxies are highly realistic when compared with samples from the real dataset. We quantify the similarity by borrowing from the deep generative learning literature, using the `Fr\'echet Inception Distance' to test for subjective and morphological similarity. We also introduce the `Synthetic Galaxy Distance' metric to compare the emergent physical properties (such as total magnitude, colour and half light radius) of a ground truth…
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