Spectral indices and principal component analysis for lithological mapping in the Erongo region, Namibia
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Publisher
MDPI
Abstract
The mineral deposits in Namibia’s Erongo region are renowned and frequently associated with complex geological environments, including calcrete-hosted paleochannels and hydrothermal alteration zones. Mineral extraction is hindered by high operational costs, restricted accessibility and stringent environmental regulations. To address these challenges, this study proposes an integrated approach that combines satellite remote sensing and machine learning to map and identify mineralisation-indicative zones. Sentinel 2 Multispectral Instrument (MSI) and Landsat 8 Operational Land Imager (OLI) multispectral data were employed due to their global coverage, spectral fidelity and suitability for geological investigations. Normalized Difference Vegetation Index (NDVI) masking was applied to minimise vegetation interference. Spectral indices—the Clay Index, Carbonate Index, Iron Oxide Index and Ferrous Iron Index—were developed and enhanced using false-colour composites. Principal Component Analysis (PCA) was used to reduce redundancy and extract significant spectral patterns. Supervised classification was performed using Support Vector Machine (SVM), Random Forest (RF) and Maximum Likelihood Classification (MLC), with validation through confusion matrices and metrics such as Overall Accuracy, User’s Accuracy, Producer’s Accuracy and the Kappa coefficient. The results showed that RF achieved the highest accuracy on Landsat 8 and MLC outperformed others on Sentinel 2, while SVM showed balanced performance. Sentinel 2’s higher spatial resolution enabled improved delineation of alteration zones. This approach supports efficient and low-impact mineral prospecting in remote environments.
Description
DATA AVAILABILITY STATEMENT : Data used for this study will be provided by the corresponding author upon reasonable request.
Keywords
Machine learning, Mineral exploration, Principal component analysis (PCA), Multispectral remote sensing, Spectral indices, Supervised classification
Sustainable Development Goals
SDG-13: Climate action
Citation
Benade, R.T. & Ajayi, O.G. Spectral Indices and Principal Component Analysis for Lithological Mapping in the Erongo Region, Namibia. Applied Sciences 2025, 15, 13251. https://doi.org/10.3390/app152413251.
