Litcius/Paper detail

Inpainting Galactic Foreground Intensity and Polarization Maps Using Convolutional Neural Networks

Giuseppe Puglisi, Xiran Bai

2020The Astrophysical Journal21 citationsDOIOpen Access PDF

Abstract

Abstract The Deep Convolutional Neural Networks (DCNNs) have been a popular tool for image generation and restoration. In this work, we applied DCNNs to the problem of inpainting non-Gaussian astrophysical signal, in the context of Galactic diffuse emissions at the millimetric and submillimetric regimes, specifically Synchrotron and Thermal Dust emissions. Both signals are affected by contamination at small angular scales due to extragalactic radio sources (the former) and dusty star-forming galaxies (the latter). We compare the performance of the standard diffusive inpainting with that of two novel methodologies relying on DCNNs, namely Generative Adversarial Networks and Deep-Prior. We show that the methods based on the DCNNs are able to reproduce the statistical properties of the ground-truth signal more consistently with a higher confidence level. The Python Inpainter for Cosmological and AStrophysical SOurces ( PICASSO ) is a package encoding a suite of inpainting methods described in this work and has been made publicly available at http://giuspugl.github.io/picasso/ .

Topics & Concepts

InpaintingPhysicsConvolutional neural networkGalaxyPython (programming language)Artificial intelligenceAstrophysicsSynchrotronDeep learningPolarization (electrochemistry)Prior probabilityContext (archaeology)Artificial neural networkPattern recognition (psychology)Computer visionActive galactic nucleusAstronomyIntensity mappingIterative reconstructionMagnetic monopoleThermalSpiral galaxyCovarianceImage (mathematics)Generative adversarial networkRadio galaxyGalactic CenterImage processingRadio Astronomy Observations and TechnologyGalaxies: Formation, Evolution, PhenomenaAdvanced Image Processing Techniques