HyDeMiC: A Deep Learning-based Mineral Classifier using Hyperspectral Data
M. L. Mamud, Piyoosh Jaysaval, Frederick D Day-Lewis, and M. K. Mudunuru

TL;DR
HyDeMiC is a deep learning-based hyperspectral mineral classifier that demonstrates high accuracy and robustness under various noise conditions, improving mineral identification in remote sensing applications.
Contribution
This paper introduces HyDeMiC, a CNN model trained on USGS hyperspectral data, capable of accurate mineral classification even with significant noise, advancing remote sensing mineral exploration.
Findings
Achieved MCC = 1.00 on clean data
Maintained strong performance at 5% noise level
Demonstrated robustness in noisy real-world conditions
Abstract
Hyperspectral imaging (HSI) has emerged as a powerful remote sensing tool for mineral exploration, capitalizing on unique spectral signatures of minerals. However, traditional classification methods such as discriminant analysis, logistic regression, and support vector machines often struggle with environmental noise in data, sensor limitations, and the computational complexity of analyzing high-dimensional HSI data. This study presents HyDeMiC (Hyperspectral Deep Learning-based Mineral Classifier), a convolutional neural network (CNN) model designed for robust mineral classification under noisy data. To train HyDeMiC, laboratory-measured hyperspectral data for 115 minerals spanning various mineral groups were used from the United States Geological Survey (USGS) library. The training dataset was generated by convolving reference mineral spectra with an HSI sensor response function.…
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Taxonomy
TopicsGeochemistry and Geologic Mapping · Remote-Sensing Image Classification · Mineral Processing and Grinding
