A machine learning approach to find association between imaging features and XRF signatures of rocks in underground mines
conference contribution
posted on 2023-05-23, 12:11authored byRahman, A, Shahriar, MS, Timms, G, Lindley, C, Davie, AB, Biggins, D, Hellicar, A, Sennersten, C, Smith, G, Coombe, M
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.
History
Publication title
2015 IEEE SENSORS Proceedings
Pagination
1-4
ISBN
978-147998202-8
Department/School
School of Information and Communication Technology
Publisher
Institute of Electrical and Electronics Engineers Inc.
Place of publication
United States
Event title
14th IEEE SENSORS
Event Venue
Seoul, Korea
Date of Event (Start Date)
2015-11-01
Date of Event (End Date)
2015-11-04
Rights statement
Copyright 2015 IEEE
Repository Status
Restricted
Socio-economic Objectives
Mining and extraction of energy resources not elsewhere classified