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Strong-Lensing Source Reconstruction with Denoising Diffusion Restoration Models

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arxiv 2211.04365 v1 pith:F7T7BHQR submitted 2022-11-08 astro-ph.IM astro-ph.COastro-ph.GA

Strong-Lensing Source Reconstruction with Denoising Diffusion Restoration Models

classification astro-ph.IM astro-ph.COastro-ph.GA
keywords modelsourcedenoisingdiffusionpriorreconstructionastroddpmconsistent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Analysis of galaxy--galaxy strong lensing systems is strongly dependent on any prior assumptions made about the appearance of the source. Here we present a method of imposing a data-driven prior / regularisation for source galaxies based on denoising diffusion probabilistic models (DDPMs). We use a pre-trained model for galaxy images, AstroDDPM, and a chain of conditional reconstruction steps called denoising diffusion reconstruction model (DDRM) to obtain samples consistent both with the noisy observation and with the distribution of training data for AstroDDPM. We show that these samples have the qualitative properties associated with the posterior for the source model: in a low-to-medium noise scenario they closely resemble the observation, while reconstructions from uncertain data show greater variability, consistent with the distribution encoded in the generative model used as prior.

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