21-cm foreground removal using AI and frequency-difference technique
Feng Shi, Haoxiang Chang, Le Zhang, Huanyuan Shan, Jiajun Zhang,, Suiping Zhou, Ming Jiang, and Zitong Wang

TL;DR
This paper introduces a novel U-Net based foreground removal method for 21 cm intensity mapping, utilizing frequency-difference preprocessing to effectively recover HI signals and outperform traditional techniques.
Contribution
Develops a new frequency-difference preprocessing step for U-Net networks, significantly reducing foreground amplitude range and improving HI signal recovery in 21 cm intensity mapping.
Findings
Reliable HI signal recovery at scales k < 0.3 h^{-1} Mpc
Outperforms PCA method with 60% better cross-correlation ratios
Effective in the presence of systematics and noise levels
Abstract
The deep learning technique has been employed in removing foreground contaminants from 21 cm intensity mapping, but its effectiveness is limited by the large dynamic range of the foreground amplitude. In this study, we develop a novel foreground removal technique grounded in U-Net networks. The essence of this technique lies in introducing an innovative data preprocessing step specifically, utilizing the temperature difference between neighboring frequency bands as input, which can substantially reduce the dynamic range of foreground amplitudes by approximately two orders of magnitude. This reduction proves to be highly advantageous for the U-Net foreground removal. We observe that the HI signal can be reliably recovered, as indicated by the cross-correlation power spectra showing unity agreement at the scale of Mpc in the absence of instrumental effects. Moreover,…
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Taxonomy
TopicsSpeech and Audio Processing · Image and Signal Denoising Methods · Advanced Algorithms and Applications
