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Deep learning discrimination of quartz and resin in optical microscopy images of minerals

机译:石英和树脂在矿物学中光学显微镜图像深度学习鉴别

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Mineral processing is the process of separating commercially valuable minerals from their ores. The final quality of the iron ore is tied to the efficiency of its beneficiation process, which can be optimized when the composition of the iron ore is known. Reflected Light Optical Microscopy (RLOM) has been traditionally used to analyze the composition of iron ore samples. However, due to a similar reflectance, the commercially available mounting resins tend to get mixed with the quartz phase. Therefore, it is a well-known problem that, while the major mineralogical phases (mainly hematite goethite and magnetite) can be segmented, it is not possible to segment and analyze the quartz phase by RLOM. Convolutional Neural Networks (CNNs) are a branch of machine learning that have been experiencing a considerable development and thus efficient application in the field of image analysis and classification. As CNNs have been matching and sometimes even outperforming humans, it is reasonable to apply them to this problem, for a human operator can easily distinguish between quartz and resin. After building a databank constituting of 1747 images of resin and 1745 images of quartz for the training set and 442 images of each class for the testing set, the Convolutional Neural Network (CNN) achieved, once trained, success rates above 95%. This success rate is a clear indicator that CNNs can indeed be a solution to this classic problem.
机译:矿物加工是将商业上有价值的矿物从它们的矿石分离的过程。铁矿石的最终质量与其益处理过程的效率相关联,当已知铁矿石的组成时,可以优化。反射光学显微镜(RLOM)传统上用于分析铁矿石样品的组成。然而,由于类似的反射率,市售的安装树脂倾向于与石英相混合。因此,众所周知的问题是,虽然可以对主要的矿物学相(主要是赤铁矿和磁铁矿)进行分段,但是不可能通过RLOM进行分析和分析石英阶段。卷积神经网络(CNNS)是机器学习的分支,其已经经历了相当大的发展,从而在图像分析和分类领域中有效应用。随着CNNS一直在匹配并且有时甚至优于人类,将它们应用于这个问题是合理的,对于人类操作员可以容易地区分石英和树脂。在构成1747个树脂图像的数据库和1745张训练集的训练集图像和442个图像中的测试集的442个图像中,卷积神经网络(CNN)达到训练,成功率高于95%。这种成功率是一个明确的指标,即CNN可以确实是解决这个经典问题的解决方案。

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