2020
DOI: 10.1002/jrs.5952
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Asymmetric least‐squares baseline algorithm with peak screening for automatic processing of the Raman spectra

Abstract: The signal in Raman spectroscopy has three components: vibrational bands, noise, and luminescence. Although the noise can be easily separated from the Raman bands either by a variety of algorithms or by adjusting the measurement conditions, to distinguish between the luminescence and the Raman peaks is a challenging task. Even though a number of algorithms have been proposed for this purpose, most of them show poor performance when applied to broad overlapping Raman bands with extended tails. A practical examp… Show more

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Cited by 45 publications
(41 citation statements)
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“…The Raman spectrum of rGO was deconvoluted into five peaks as it was previously suggested [ 67 ]. Prior to deconvolution, the background was subtracted by the algorithm described elsewhere [ 68 ]. The peak shapes were approximated with the flexible pseudo-Voigt profiles [ 69 ].…”
Section: Resultsmentioning
confidence: 99%
“…The Raman spectrum of rGO was deconvoluted into five peaks as it was previously suggested [ 67 ]. Prior to deconvolution, the background was subtracted by the algorithm described elsewhere [ 68 ]. The peak shapes were approximated with the flexible pseudo-Voigt profiles [ 69 ].…”
Section: Resultsmentioning
confidence: 99%
“…Baseline corrections are performed on each principal loading vector using Korepanov's derpsalsa algorithm, 19 and subtracted from each data frame. The baseline-corrected central spectrum is also computed and stored.…”
Section: Discussionmentioning
confidence: 99%
“…In this sense, we envision adding new tools i) to complement the current analysis pipelines (e.g. with outlier rejection and smoothing), or ii) to automate processing of spectra with fully autonomous algorithms, [7,25,55,56] or iii) to implement data-driven analysis via dimensionality reduction techniques [57,58] and trained machine learning models. [59]…”
Section: Discussionmentioning
confidence: 99%