DocumentCode :
73892
Title :
A Fast Classification Scheme in Raman Spectroscopy for the Identification of Mineral Mixtures Using a Large Database With Correlated Predictors
Author :
Cochrane, Corey J. ; Blacksberg, Jordana
Author_Institution :
Jet Propulsion Lab., California Inst. of Technol., Pasadena, CA, USA
Volume :
53
Issue :
8
fYear :
2015
fDate :
Aug. 2015
Firstpage :
4259
Lastpage :
4274
Abstract :
Robust classification methods are vital to the successful implementation of many material characterization techniques, particularly where large databases exist. In this paper, we demonstrate an extremely fast classification method for the identification of mineral mixtures in Raman spectroscopy using the large RRUFF database. However, this method is equally applicable to other techniques meeting the large database criteria, these including laser-induced breakdown, X-ray diffraction, and mass spectroscopy methods. Classification of these multivariate datasets can be challenging due in part to the various obscuring features inherently present within the underlying dataset and in part to the volume and variety of information known a priori. Some of the more specific challenges include the observation of mixtures with overlapping spectral features, the use of large databases (i.e., the number of predictors far outweighs the number of observations), the use of databases that contain groups of correlated spectra, and the ever present, clouding contaminants of noise, undesired background, and spectrometer artifacts. Although many existing classification algorithms attempt to address these problems individually, not many address them as a whole. Here, we apply a multistage approach, which leverages well-established constrained regression techniques, to overcome these challenges. Our modifications to conventional algorithm implementations are shown to increase speed and performance of the classification process. Unlike many other techniques, our method is able to rapidly classify mixtures while simultaneously preserving sparsity. It is easily implemented, has very few tuning parameters, does not require extensive parameter training, and does not require data dimensionality reduction prior to classification.
Keywords :
Raman spectra; Raman spectroscopy; feature extraction; feature selection; geophysical techniques; geophysics computing; image classification; information retrieval systems; minerals; optical correlation; remote sensing; RRUFF database criteria; Raman spectroscopy-based classification scheme; X-ray diffraction technique; constrained regression techniques; correlated predictors; correlated spectra-containing databases; data dimensionality reduction; extensive parameter training; fast image classification scheme; fast mineral mixture classification method; image classification process performance; image classification process speed; laser-induced breakdown technique; mass spectroscopy method; material characterization technique implementation; mineral mixture classification algorithm; mineral mixture identification method; mineral mixture information variety; mineral mixture information volume; mineral mixture overlapping spectral features; multistage approach; multivariate dataset classification; multivariate dataset features; noise clouding contaminant-containing databases; rapid mineral mixture classification method; robust classification methods; sparsity preservation; spectrometer artifact-containing databases; tuning parameters; undesired background-containing databases; Databases; Minerals; Noise; Photonics; Prediction algorithms; Raman scattering; Rocks; Classification; Raman spectroscopy; elastic net (EN); planetary mineralogy; regression;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2015.2394377
Filename :
7046419
Link To Document :
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