Inpainting via Generative Adversarial Networks for CMB data analysis [CEA]

http://arxiv.org/abs/2004.04177


In this work, we propose a new method to inpaint the CMB signal in regions masked out following a point source extraction process. We adopt a modified Generative Adversarial Network (GAN) and compare different combinations of internal (hyper-)parameters and training strategies. We study the performance using a suitable $\mathcal{C}_r$ variable in order to estimate the performance regarding the CMB power spectrum recovery. We consider a test set where one point source is masked out in each sky patch with a 1.83 $\times$ 1.83 squared degree extension, which, in our gridding, corresponds to 64 $\times$ 64 pixels. The GAN is optimized for estimating performance on Planck 2018 total intensity simulations. The training makes the GAN effective in reconstructing a masking corresponding to about 1500 pixels with $1\%$ error down to angular scales corresponding to about 5 arcminutes.

Read this paper on arXiv…

A. Sadr and F. Farsian
Fri, 10 Apr 20
55/56

Comments: 19 pages, 21 figures. Prepared for submission to JCAP. All codes will be published after acceptance