Citation
Angel Daruna, Vasily Zadorozhnyy, Georgina Lukoczki, Han-Pang Chiu; published in Proceedings of the 32nd ACM International Conference on Advances in Geographic Information Systems (SIGSPATIAL), 565-568, 2024.
Abstract
Machine Learning (ML) for Mineral Prospectivity Mapping (MPM) remains a challenging problem as it requires the analysis of associations between large-scale multi-modal geospatial data and a few historical mineral commodity observations (positive labels). Recent MPM works have explored Deep Learning (DL) as a modeling tool with more representation capacity. However, these overparameterized methods may be more prone to overfitting due to their reliance on scarce labeled data. While a large quantity of unlabeled geospatial data exists, no prior MPM works have considered using such information in a self-supervised manner. Our MPM approach uses a masked image modeling framework to pretrain a backbone neural network in a self-supervised manner using unlabeled geospatial data alone. Then, the backbone network provides feature extraction for downstream MPM tasks. We evaluated our approach alongside existing methods to assess the mineral prospectivity of Mississippi Valley-type (MVT) and Clastic-Dominated (CD) Zn-Pb deposits in North America and Australia. Our results demonstrate that self-supervision promotes robustness in learned features, improving prospectivity predictions over prior methods.