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An automatic HyLogger (TM) mineral mapping method using a machine-learning-based computer vision technique

机译:一种使用基于机器学习的计算机视觉技术的自动Hylogger(TM)矿物映射方法

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摘要

HyLogger profile scanning is commonly utilised for drill-core logging but the limited scanning area may not detect all important geological features. The study presented in this paper aims to develop a mineral mapping solution for this core-logging process by leveraging the colour image captured during the scanning process. A machine-learning-based computer vision program was developed by implementing a k-means clustering and a global colour profiling algorithm. A suite of drill-core images was used to validate the developed program. Results indicate that there is a direct correlation between the mineral assemblage of a rock type and its colour specifications. The identified mineral type and relative abundance were comparable with HyLogger scan results.
机译:Hylogger剖面扫描通常用于钻芯测井,但有限的扫描区域可能无法检测到所有重要的地质特征。 本文提出的研究旨在通过利用在扫描过程中捕获的彩色图像来开发用于该核记录过程的矿物映射解决方案。 通过实现K-Meanse群集和全局颜色分析算法,开发了一种基于机器学习的计算机视觉程序。 使用套件钻探核心图像来验证开发的程序。 结果表明,岩石型矿物组合物与其颜色规格之间存在直接相关性。 所确定的矿物型和相对丰度与Hylogger扫描结果相当。

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