We present IFS-RedEx, a spectrum and redshift extraction pipeline for
integral-field spectrographs. A key feature of the tool is a wavelet-based
spectrum cleaner. It identifies reliable spectral features, reconstructs their
shapes, and suppresses the spectrum noise. This gives the technique an
advantage over conventional methods like Gaussian filtering, which only smears
out the signal. As a result, the wavelet-based cleaning allows the quick
identification of true spectral features. We test the cleaning technique with
degraded MUSE spectra and find that it can detect spectrum peaks down to S/N =
8 while reporting no fake detections. We apply IFS-RedEx to MUSE data of the
strong lensing cluster MACSJ1931.8-2635 and extract 54 spectroscopic redshifts.
We identify 29 cluster members and 22 background galaxies with z >= 0.4.
IFS-RedEx is open source and publicly available.
Description
[1703.09239] IFS-RedEx, a redshift extraction software for integral-field spectrographs: Application to MUSE data
%0 Generic
%1 rexroth2017ifsredex
%A Rexroth, Markus
%A Kneib, Jean-Paul
%A Joseph, Rémy
%A Richard, Johan
%A Her, Romaric
%D 2017
%K ifu muse redshift
%T IFS-RedEx, a redshift extraction software for integral-field
spectrographs: Application to MUSE data
%U http://arxiv.org/abs/1703.09239
%X We present IFS-RedEx, a spectrum and redshift extraction pipeline for
integral-field spectrographs. A key feature of the tool is a wavelet-based
spectrum cleaner. It identifies reliable spectral features, reconstructs their
shapes, and suppresses the spectrum noise. This gives the technique an
advantage over conventional methods like Gaussian filtering, which only smears
out the signal. As a result, the wavelet-based cleaning allows the quick
identification of true spectral features. We test the cleaning technique with
degraded MUSE spectra and find that it can detect spectrum peaks down to S/N =
8 while reporting no fake detections. We apply IFS-RedEx to MUSE data of the
strong lensing cluster MACSJ1931.8-2635 and extract 54 spectroscopic redshifts.
We identify 29 cluster members and 22 background galaxies with z >= 0.4.
IFS-RedEx is open source and publicly available.
@misc{rexroth2017ifsredex,
abstract = {We present IFS-RedEx, a spectrum and redshift extraction pipeline for
integral-field spectrographs. A key feature of the tool is a wavelet-based
spectrum cleaner. It identifies reliable spectral features, reconstructs their
shapes, and suppresses the spectrum noise. This gives the technique an
advantage over conventional methods like Gaussian filtering, which only smears
out the signal. As a result, the wavelet-based cleaning allows the quick
identification of true spectral features. We test the cleaning technique with
degraded MUSE spectra and find that it can detect spectrum peaks down to S/N =
8 while reporting no fake detections. We apply IFS-RedEx to MUSE data of the
strong lensing cluster MACSJ1931.8-2635 and extract 54 spectroscopic redshifts.
We identify 29 cluster members and 22 background galaxies with z >= 0.4.
IFS-RedEx is open source and publicly available.},
added-at = {2017-03-29T10:10:13.000+0200},
author = {Rexroth, Markus and Kneib, Jean-Paul and Joseph, Rémy and Richard, Johan and Her, Romaric},
biburl = {https://www.bibsonomy.org/bibtex/229b74eb64a40c31cc0e754da2460ca96/miki},
description = {[1703.09239] IFS-RedEx, a redshift extraction software for integral-field spectrographs: Application to MUSE data},
interhash = {e14f5dedad9f9b49c1cf40bd2ebbe0eb},
intrahash = {29b74eb64a40c31cc0e754da2460ca96},
keywords = {ifu muse redshift},
note = {cite arxiv:1703.09239Comment: 7 pages, 4 figures, submitted to MNRAS},
timestamp = {2017-03-29T10:10:13.000+0200},
title = {IFS-RedEx, a redshift extraction software for integral-field
spectrographs: Application to MUSE data},
url = {http://arxiv.org/abs/1703.09239},
year = 2017
}