Semi-Automated Segmentation of Geoscientific Data Using Superpixels
Conrad P. Koziol, Eldad Haber

TL;DR
This paper introduces a deep learning method for semi-automated segmentation of geoscientific survey data using superpixels, addressing dataset diversity and connectivity issues to improve geological mapping.
Contribution
It presents a novel deep-learning approach with a new loss function that enhances superpixel segmentation for diverse geoscientific datasets, enabling better integration of prior knowledge.
Findings
Effective segmentation of diverse datasets demonstrated
New loss function improves superpixel connectivity control
Enhanced geological mapping accuracy
Abstract
Geological processes determine the distribution of resources such as critical minerals, water, and geothermal energy. However, direct observation of geology is often prevented by surface cover such as overburden or vegetation. In such cases, remote and in-situ surveys are frequently conducted to collect physical measurements of the earth indicative of the geology. Developing a geological segmentation based on these measurements is challenging since individual datasets can differ in properties (e.g. units, dynamic ranges, textures) and because the data does not uniquely constrain the geology. Further, as the number of datasets grows the information to constrain geology increases while simultaneously becoming harder to make sense of. Inspired by the concept of superpixels, we propose a deep-learning based approach to segment rasterized survey data into regions with similar…
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Taxonomy
TopicsGeochemistry and Geologic Mapping · Remote-Sensing Image Classification · Mineral Processing and Grinding
