Sammanfattning
This study investigated the applicability of machine learning algorithms to detect the presence of elements in underground mines from rock surface images, which is proposed as a heuristic classification method inspired by the ability of human geologists to make judgments about the location of ore veins by eye. A regression algorithm was investigated to find associations between image features and X-Ray Fluorescence (XRF) signatures indicating elemental content of the surface and near-surface region of the rocks. A set of image processing algorithms was used to extract color distribution, edge orientation statistics, and texture of the rock surfaces. XRF signatures were obtained from the same samples, providing a semi-quantitative measure of element concentration. The process was performed on a set of 20 rock samples. The regression algorithm was then trained to find a mapping between image features and the semi-quantitative element concentrations (corresponding with XRF peaks). Experimental results demonstrate the potential effectiveness of the proposed approach in the context of a specific ore body.
Originalspråk | Engelska |
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DOI | |
Status | Publicerad - 2015-dec.-31 |
Externt publicerad | Ja |
Evenemang | 14th IEEE SENSORS - Busan, Sydkorea, Republiken Korea Varaktighet: 2015-nov.-01 → 2015-nov.-04 |
Konferens
Konferens | 14th IEEE SENSORS |
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Land/Territorium | Sydkorea, Republiken Korea |
Ort | Busan |
Period | 15-11-01 → 15-11-04 |
Nationell ämneskategori
- Samhällsbyggnadsteknik (201)