4.7 Article

Improvement of pixel classification by the simultaneous use of spectral and spatial information in the framework of spectroscopic imaging

Journal

ANALYTICA CHIMICA ACTA
Volume 1242, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.aca.2023.340805

Keywords

Hyperspectral imaging; Classification; Partial least squares discriminant analysis (PLS-DA); Spectral and spatial information fusion; 2D stationary wavelet transform (2D-SWT)

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Hyperspectral imaging technology is developing rapidly, allowing for faster data acquisition with improved quality. However, current chemometric classification methods only utilize spectral information, neglecting spatial information. This limitation can be overcome by employing the 2-D Stationary Wavelet Transform in the data preprocessing phase.
Hyperspectral imaging technology is developing in a very fast way. We find it today in many analytical de-velopments using different spectroscopies for sample classification purposes. Instrumental developments allow us to acquire more and more data in shorter and shorter periods of time while improving their quality. Therefore, we are going in the right direction as far as the measure is concerned. On the other hand, we can make a more mixed assessment for the hyperspectral imaging data processing. Indeed, the data acquired in spectroscopic imaging have the particularity of encoding both spectral and spatial information. Unfortunately, in chemo-metrics, almost all classification approaches today only use spectral information from three-dimensional hyperspectral data arrays. To be more precise, an approach encompassing the unfolding/refolding of such ar-rays is often applied beforehand because the majority of algorithms for analysing these data are not capable of handling them in their original structure. Spatial information is therefore lost during the chemometric explo-ration. The study of the spectral part of the acquired data array alone is clearly a limitation that we propose to overcome in this work. 2-D Stationary Wavelet Transform will be used in the data preprocessing phase to ensure the joint use of spectral and spatial information. Two spectroscopic datasets will then be used to evaluate the potential of our approach in the context of supervised classification.

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