HyperPCA: a Powerful Tool to Extract Elemental Maps from Noisy Data Obtained in LIBS Mapping of Materials
Riccardo Finotello, Mohamed Tamaazousti, Jean-Baptiste Sirven

TL;DR
HyperPCA is a novel analysis method combining wavelet transforms and sparse PCA, designed to extract high-quality elemental maps from noisy LIBS hyperspectral data, improving chemical characterization of surfaces.
Contribution
The paper introduces HyperPCA, a new sparse PCA-based technique with wavelet transforms for enhanced noise reduction in LIBS hyperspectral imaging.
Findings
HyperPCA outperforms standard PCA in low signal-to-noise conditions.
It provides more accurate and detailed elemental maps.
The method is effective on both simulated and real LIBS datasets.
Abstract
Laser-induced breakdown spectroscopy is a preferred technique for fast and direct multi-elemental mapping of samples under ambient pressure, without any limitation on the targeted element. However, LIBS mapping data have two peculiarities: an intrinsically low signal-to-noise ratio due to single-shot measurements, and a high dimensionality due to the high number of spectra acquired for imaging. This is all the truer as lateral resolution gets higher: in this case, the ablation spot diameter is reduced, as well as the ablated mass and the emission signal, while the number of spectra for a given surface increases. Therefore, efficient extraction of physico-chemical information from a noisy and large dataset is a major issue. Multivariate approaches were introduced by several authors as a means to cope with such data, particularly Principal Component Analysis. This technique is useful to…
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Taxonomy
MethodsPrincipal Components Analysis
