A machine vision approach for detecting changes in drill core textures using optical images

Xiaomeng Gu, Nigel J. Cook, Andrew V. Metcalfe, Chris Aldrich
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Abstract

Drill core images offer valuable insights into the texture, structure and mineralogy of ores and their host rocks, which can be used to optimise downstream processes in the mining industry. The impact on downstream processes from particles of similar composition and mineralogy but different textures has been examined by several previous researchers through the application of supervised machine-learning techniques. This study proposes a novel approach for detecting changes in drill core textures through the analysis of optical images. This approach compares three widely used image feature extraction techniques (local binary patterns, grey-level co-occurrence matrix and convolutional neural network), followed by calculation of a uniqueness measure, based on the Hotelling statistic, designed to identify anomalous segments of core. The effectiveness of the uniqueness measure is validated on a test core comprising six sections with different textures. Two drill cores, from the Brukunga test site in South Australia, were selected as case studies. Of the three feature extraction methods, local binary patterns were found to give the strongest signals of change. There exist two main regimes that separate halfway along both drill cores, indicating a change in lithology or the presence of mineralisation.
利用光学图像检测钻芯纹理变化的机器视觉方法
钻孔岩心图像为了解矿石及其母岩的质地、结构和矿物学提供了宝贵的信息,可用于优化采矿业的下游工艺。之前有几位研究人员通过应用有监督的机器学习技术,研究了成分和矿物学相似但质地不同的颗粒对下游工艺的影响。本研究提出了一种通过分析光学图像来检测钻芯纹理变化的新方法。该方法比较了三种广泛使用的图像特征提取技术(局部二进制模式、灰度级共现矩阵和卷积神经网络),然后根据霍特林统计量计算唯一性度量,旨在识别异常的岩心片段。唯一性测量方法的有效性在由六个不同纹理的岩心段组成的测试岩心上得到了验证。案例研究选择了南澳大利亚 Brukunga 试验场的两块钻芯。结果发现,在三种特征提取方法中,局部二元模式的变化信号最强。在两个钻探岩心的中途存在两个主要的分离体系,表明岩性发生了变化或存在矿化现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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