Convolutional Neural Networks for Mineral Prospecting Through Alteration Mapping with Remote Sensing Data

Traditional geological mapping methods, which rely on field observations and rock sample analysis, are inefficient for

continuous spatial mapping of geological features such as alteration zones. Deep learning models such as convolutional

neural networks (CNNs) have ushered in a transformative era in remote sensing data analysis. CNNs excel in automatically

extracting features from image data for classification and regression problems. CNNs have the ability to pinpoint specific

mineralogical changes attributed to mineralisation processes by discerning subtle features within remote sensing data.

In this study, we deploy CNNs with three sets of remote sensing data, namely Landsat 8, Landsat 9, and ASTER,

to delineate diverse alteration zones within a mineral-rich region north of Broken Hill in western New South Wales,

Australia. Our methodology involves model training using two distinct sets of training samples generated through ground

truth data and a fully automated approach through selective principal component analysis (PCA). We also compare CNNs

with conventional machine learning models, including k-nearest neighbours, support vector machines, and multilayer

perceptron. Our findings indicate that training with a ground truth-based dataset produces more reliable alteration maps.

Additionally, we find that CNNs perform slightly better when compared to conventional machine learning models, which

further demonstrates the ability of CNNs to capture spatial patterns in remote sensing data effectively. We find that Landsat

9 surpasses Landsat 8 in mapping iron oxide areas when employing the CNNs model trained with ground truth data

obtained by field surveys. We also observe that using ASTER data with the CNNs model trained on the ground truth-based

dataset produces the most accurate maps for two other important types of alteration zones, argillic and propylitic. This

underscores the utility of CNNs in enhancing the efficiency and precision of geological mapping, particularly in discerning

subtle alterations indicative of mineralisation processes, especially those associated with critical metal resources.

figure 12

Alteration zones, including argillic, propylitic, and iron oxide, mapped using CNNs, overlaid on the geological map of the study area

Farahbakhsh, E., Goel, D., Pimparkar, D., Müller, R.D. and Chandra, R., 2025. Convolutional neural networks for mineral prospecting through alteration mapping with remote sensing data. PFG–Journal of Photogrammetry, Remote Sensing and Geoinformation Science, pp.1-22.

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