Multiple component decomposition from millimeter single-channel data

11/23/2017
by   Iván Rodríguez-Montoya, et al.
0

We present an implementation of a blind source separation algorithm to remove foregrounds off millimeter surveys made by single-channel instruments. In order to make possible such a decomposition over single-wavelength data: we generate levels of artificial redundancy, then perform a blind decomposition, calibrate the resulting maps, and lastly measure physical information. We simulate the reduction pipeline using mock data: atmospheric fluctuations, extended astrophysical foregrounds, and point-like sources, but we apply the same methodology to the AzTEC/ASTE survey of the Great Observatories Origins Deep Survey-South (GOODS-S). In both applications, our technique robustly decomposes redundant maps into their underlying components, reducing flux bias, improving signal-to-noise, and minimizing information loss. In particular, the GOODS-S survey is decomposed into four independent physical components, one of them is the already known map of point sources, two are atmospheric and systematic foregrounds, and the fourth component is an extended emission that can be interpreted as the confusion background of faint sources.

READ FULL TEXT

page 8

page 9

page 10

page 11

page 14

page 15

page 17

page 18

research
12/03/2012

Semi-blind Source Separation via Sparse Representations and Online Dictionary Learning

This work examines a semi-blind single-channel source separation problem...
research
06/01/2017

Blind nonnegative source separation using biological neural networks

Blind source separation, i.e. extraction of independent sources from a m...
research
04/03/2009

Performing Nonlinear Blind Source Separation with Signal Invariants

Given a time series of multicomponent measurements x(t), the usual objec...
research
02/07/2020

Blind Source Separation for NMR Spectra with Negative Intensity

NMR spectral datasets, especially in systems with limited samples, can b...
research
04/11/2020

Blind Bounded Source Separation Using Neural Networks with Local Learning Rules

An important problem encountered by both natural and engineered signal p...
research
10/13/2021

One to Multiple Mapping Dual Learning: Learning Multiple Sources from One Mixed Signal

Single channel blind source separation (SCBSS) refers to separate multip...
research
04/16/2018

Separating diffuse from point-like sources - a Bayesian approach

We present the starblade algorithm, a method to separate superimposed po...

Please sign up or login with your details

Forgot password? Click here to reset