• DocumentCode
    3722130
  • Title

    A machine learning approach to find association between imaging features and XRF signatures of rocks in underground mines

  • Author

    Ashfaqur Rahman;Md Sumon Shahriar;Greg Timms;Craig Lindley;Andrew Boo Davie;David Biggins;Andrew Hellicar;Charlotte Sennersten;Greg Smith;Mac Coombe

  • Author_Institution
    Autonomous Systems Program, CSIRO, Sandy Bay, Tasmania, Australia
  • fYear
    2015
  • Firstpage
    1
  • Lastpage
    4
  • Abstract
    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.
  • Keywords
    "Rocks","Image color analysis","Imaging","Machine learning algorithms","Image edge detection","Surface texture","Histograms"
  • Publisher
    ieee
  • Conference_Titel
    SENSORS, 2015 IEEE
  • Type

    conf

  • DOI
    10.1109/ICSENS.2015.7370680
  • Filename
    7370680