High-Resolution CMB Lensing Reconstruction with Deep Learning

05/15/2022
by   Peikai Li, et al.
0

Next-generation cosmic microwave background (CMB) surveys are expected to provide valuable information about the primordial universe by creating maps of the mass along the line of sight. Traditional tools for creating these lensing convergence maps include the quadratic estimator and the maximum likelihood based iterative estimator. Here, we apply a generative adversarial network (GAN) to reconstruct the lensing convergence field. We compare our results with a previous deep learning approach – Residual-UNet – and discuss the pros and cons of each. In the process, we use training sets generated by a variety of power spectra, rather than the one used in testing the methods.

READ FULL TEXT
research
05/28/2020

Mass Estimation of Galaxy Clusters with Deep Learning II: CMB Cluster Lensing

We present a new application of deep learning to reconstruct the cosmic ...
research
01/04/2021

Reconstructing Patchy Reionization with Deep Learning

The precision anticipated from next-generation cosmic microwave backgrou...
research
07/26/2021

Combining Maximum-Likelihood with Deep Learning for Event Reconstruction in IceCube

The field of deep learning has become increasingly important for particl...
research
08/11/2019

CMB-GAN: Fast Simulations of Cosmic Microwave background anisotropy maps using Deep Learning

Cosmic Microwave Background (CMB) has been a cornerstone in many cosmolo...
research
10/31/2017

SVSGAN: Singing Voice Separation via Generative Adversarial Network

Separating two sources from an audio mixture is an important task with m...
research
03/14/2022

Magnetic Field Prediction Using Generative Adversarial Networks

Plenty of scientific and real-world applications are built on magnetic f...
research
11/19/2020

Application of Deep Learning-based Interpolation Methods to Nearshore Bathymetry

Nearshore bathymetry, the topography of the ocean floor in coastal zones...

Please sign up or login with your details

Forgot password? Click here to reset