Title: Converging image processing and data mining for Raman spectroscopy analysis
Authors: Imane Zouaneb; Mostefa Belarbi; Abdellah Chouarfia
Addresses: LIM Research Laboratory, University of TIARET, Tiaret, Algeria ' LIM Research Laboratory, University of TIARET, Tiaret, Algeria ' University of Sciences and Technology Mohamed Boudiaf, Oran, Algeria
Abstract: The aim of this paper is to show how numerical data analysis such as principal component analysis (PCA) and graphic processing unit (GPU)-based image processing techniques can be used for Raman spectra application. GPU-based parallel processing is used to extract representative peaks to identify the chemical origin of Raman spectrometry samples. We had also demonstrated how enhanced spectroscopy Raman analysis can be exploited over biomaterials samples using PCA that exploit each spectra feature correlated with properties (peaks) set in the basis on existing databases. We use BIORAD database in order to generate certain classes using Raman vibration peaks. The approach of PCA to data analysis gives promising results such as rapid clusters extraction. This classification can be combined to characterise Raman techniques.
Keywords: numeric data analysis; data mining; principal component analysis; PCA; Raman spectroscopy; graphic processing unit; GPU; parallel image processing.
DOI: 10.1504/IJCNDS.2022.122176
International Journal of Communication Networks and Distributed Systems, 2022 Vol.28 No.3, pp.287 - 311
Received: 11 Apr 2021
Accepted: 04 Aug 2021
Published online: 11 Apr 2022 *