Supervised and Penalized Baseline Correction
Abstract
Spectroscopic measurements can show distorted spectral shapes arising from a mixture of absorbing and scattering contributions. These distortions (or baselines) often manifest themselves as non-constant offsets or low-frequency oscillations. As a result, these baselines can adversely affect analytical and quantitative results. Baseline correction is an umbrella term where one applies pre-processing methods to obtain baseline spectra (the unwanted distortions) and then remove the distortions by differencing. However, current state-of-the art baseline correction methods do not utilize analyte concentrations even if they are available, or even if they contribute significantly to the observed spectral variability. We examine a class of state-of-the-art methods (penalized baseline correction) and modify them such that they can accommodate a priori analyte concentrations such that prediction can be enhanced. Performance will be assessed on two near infra-red data sets across both classical penalized baseline correction methods (without analyte information) and modified penalized baseline correction methods (leveraging analyte information).
Keywords
Cite
@article{arxiv.2310.18306,
title = {Supervised and Penalized Baseline Correction},
author = {Erik Andries and Ramin Nikzad-Langerodi},
journal= {arXiv preprint arXiv:2310.18306},
year = {2024}
}
Comments
27 pages; 9 figures; 2 tables; fixed typos; additional sanity checks for grammar and syntax; streamlined text and made minor cosmetic changes