Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites

Machine learning (ML) algorithms have shown great performance in geological remote sensing applications. The study area of this work was the Fregeneda–Almendra region (Spain–Portugal) where the support vector machine (SVM) was employed. Lithium (Li)-pegmatite exploration using satellite data present...

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Main Authors: Joana Cardoso-Fernandes, Ana C. Teodoro, Alexandre Lima, Encarnación Roda-Robles
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/14/2319
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spelling doaj-fb0baba4b5ae4be6b6cfbd66850266372020-11-25T02:18:22ZengMDPI AGRemote Sensing2072-42922020-07-01122319231910.3390/rs12142319Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing PegmatitesJoana Cardoso-Fernandes0Ana C. Teodoro1Alexandre Lima2Encarnación Roda-Robles3Department of Geosciences, Environment and Land Planning, Faculty of Sciences, University of Porto, Rua Campo Alegre, 4169-007 Porto, PortugalDepartment of Geosciences, Environment and Land Planning, Faculty of Sciences, University of Porto, Rua Campo Alegre, 4169-007 Porto, PortugalDepartment of Geosciences, Environment and Land Planning, Faculty of Sciences, University of Porto, Rua Campo Alegre, 4169-007 Porto, PortugalDepartamento de Mineralogía y Petrología, University of País Vasco (UPV/EHU), Barrio Sarriena, Leioa, 48940 Bilbao, SpainMachine learning (ML) algorithms have shown great performance in geological remote sensing applications. The study area of this work was the Fregeneda–Almendra region (Spain–Portugal) where the support vector machine (SVM) was employed. Lithium (Li)-pegmatite exploration using satellite data presents some challenges since pegmatites are, by nature, small, narrow bodies. Consequently, the following objectives were defined: (i) train several SVM’s on Sentinel-2 images with different parameters to find the optimal model; (ii) assess the impact of imbalanced data; (iii) develop a successful methodological approach to delineate target areas for Li-exploration. Parameter optimization and model evaluation was accomplished by a two-staged grid-search with cross-validation. Several new methodological advances were proposed, including a region of interest (ROI)-based splitting strategy to create the training and test subsets, a semi-automatization of the classification process, and the application of a more innovative and adequate metric score to choose the best model. The proposed methodology obtained good results, identifying known Li-pegmatite occurrences as well as other target areas for Li-exploration. Also, the results showed that the class imbalance had a negative impact on the SVM performance since known Li-pegmatite occurrences were not identified. The potentials and limitations of the methodology proposed are highlighted and its applicability to other case studies is discussed.https://www.mdpi.com/2072-4292/12/14/2319machine learningremote sensinglithological mappingsupervised classificationSentinel-2mineral exploration
collection DOAJ
language English
format Article
sources DOAJ
author Joana Cardoso-Fernandes
Ana C. Teodoro
Alexandre Lima
Encarnación Roda-Robles
spellingShingle Joana Cardoso-Fernandes
Ana C. Teodoro
Alexandre Lima
Encarnación Roda-Robles
Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites
Remote Sensing
machine learning
remote sensing
lithological mapping
supervised classification
Sentinel-2
mineral exploration
author_facet Joana Cardoso-Fernandes
Ana C. Teodoro
Alexandre Lima
Encarnación Roda-Robles
author_sort Joana Cardoso-Fernandes
title Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites
title_short Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites
title_full Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites
title_fullStr Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites
title_full_unstemmed Semi-Automatization of Support Vector Machines to Map Lithium (Li) Bearing Pegmatites
title_sort semi-automatization of support vector machines to map lithium (li) bearing pegmatites
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-07-01
description Machine learning (ML) algorithms have shown great performance in geological remote sensing applications. The study area of this work was the Fregeneda–Almendra region (Spain–Portugal) where the support vector machine (SVM) was employed. Lithium (Li)-pegmatite exploration using satellite data presents some challenges since pegmatites are, by nature, small, narrow bodies. Consequently, the following objectives were defined: (i) train several SVM’s on Sentinel-2 images with different parameters to find the optimal model; (ii) assess the impact of imbalanced data; (iii) develop a successful methodological approach to delineate target areas for Li-exploration. Parameter optimization and model evaluation was accomplished by a two-staged grid-search with cross-validation. Several new methodological advances were proposed, including a region of interest (ROI)-based splitting strategy to create the training and test subsets, a semi-automatization of the classification process, and the application of a more innovative and adequate metric score to choose the best model. The proposed methodology obtained good results, identifying known Li-pegmatite occurrences as well as other target areas for Li-exploration. Also, the results showed that the class imbalance had a negative impact on the SVM performance since known Li-pegmatite occurrences were not identified. The potentials and limitations of the methodology proposed are highlighted and its applicability to other case studies is discussed.
topic machine learning
remote sensing
lithological mapping
supervised classification
Sentinel-2
mineral exploration
url https://www.mdpi.com/2072-4292/12/14/2319
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