Intelligent mineral identification using clustering and artificial neural networks techniques

H. Izadi, J. Sadri, Nosrat-Agha Mehran
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引用次数: 8

Abstract

Identifying of minerals in petrographic thin sections is done by mineralogist using polarized microscope rotation stage. Mineral identification will be a tedious work if the number of thin sections is large; this may cause some errors in final identification. Therefore, in this study, artificial neural networks (ANNs) are utilized for mineral identification. ANNs inspired by neural activities of humans have been widely being used in myriad fields of science, they are capable of estimating complex non-linear functions. Digital images are captured from every thin section, by plane-polarized and cross-polarized lights that yield twelve features (red, green, blue, hue, saturation and intensity in two states of lights) for identification of minerals. The first six features are related to plane-polarized light and the rest are related to cross-polarize light. Then, extracted features are fed into the ANN as inputs, which has been trained therefore minerals will be recognized. The high accuracy and precision of minerals identification in this study, have given the proposed intelligent system remarkable capabilities.
基于聚类和人工神经网络技术的智能矿物识别
矿物学家利用偏光显微镜旋转台对岩石薄片中的矿物进行鉴定。如果薄片数量多,矿物鉴定将是一项繁琐的工作;这可能会导致最终识别出现一些错误。因此,在本研究中,人工神经网络(ann)被用于矿物识别。受人类神经活动启发的人工神经网络已经广泛应用于无数科学领域,它们能够估计复杂的非线性函数。通过平面偏振光和交叉偏振光,从每一个薄片上捕获数字图像,产生12种特征(红、绿、蓝、色调、饱和度和两种光状态下的强度),用于识别矿物。前六个特征与平面偏振光有关,其余特征与交叉偏振光有关。然后,将提取的特征作为输入输入到人工神经网络中,人工神经网络经过训练,从而识别出矿物质。本研究中矿物识别的高准确度和精密度,使所提出的智能系统具有显著的能力。
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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