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Intelligent Identification for Rock-Mineral Microscopic Images Using Ensemble Machine Learning Algorithms

机译:基于集成机器学习算法的岩石矿物显微图像智能识别

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摘要

It is significant to identify rock-mineral microscopic images in geological engineering. The task of microscopic mineral image identification, which is often conducted in the lab, is tedious and time-consuming. Deep learning and convolutional neural networks (CNNs) provide a method to analyze mineral microscopic images efficiently and smartly. In this research, the transfer learning model of mineral microscopic images is established based on Inception-v3 architecture. The four mineral image features, including K-feldspar (Kf), perthite (Pe), plagioclase (Pl), and quartz (Qz or Q), are extracted using Inception-v3. Based on the features, the machine learning methods, logistic regression (LR), support vector machine (SVM), random forest (RF), k-nearest neighbors (KNN), multilayer perceptron (MLP), and gaussian naive Bayes (GNB), are adopted to establish the identification models. The results are evaluated using 10-fold cross-validation. LR, SVM, and MLP have a significant performance among all the models, with accuracy of about 90.0%. The evaluation result shows LR, SVM, and MLP are the outstanding single models in high-dimensional feature analysis. The three models are also selected as the base models in model stacking. The LR model is also set as the meta classifier in the final prediction. The stacking model can achieve 90.9% accuracy, which is higher than all the single models. The result also shows that model stacking effectively improves model performance.
机译:在地质工程中识别岩石矿物显微图像具有重要意义。显微矿物图像识别的任务通常在实验室中进行,既繁琐又耗时。深度学习和卷积神经网络(CNN)提供了一种有效而智能地分析矿物显微图像的方法。本研究建立了基于Inception-v3架构的矿物显微图像迁移学习模型。使用Inception-v3提取了四个矿物图像特征,包括钾长石(Kf),珍珠岩(Pe),斜长石(Pl)和石英(Qz或Q)。基于这些特征,机器学习方法,逻辑回归(LR),支持向量机(SVM),随机森林(RF),k近邻(KNN),多层感知器(MLP)和高斯朴素贝叶斯(GNB)采用,建立识别模型。使用10倍交叉验证评估结果。 LR,SVM和MLP在所有模型中均具有显着的性能,准确度约为90.0%。评估结果表明,LR,SVM和MLP是高维特征分析中出色的单个模型。这三个模型也被选为模型堆叠中的基础模型。在最终预测中,LR模型也被设置为元分类器。堆叠模型可以达到90.9%的准确性,高于所有单个模型。结果还表明,模型堆叠有效地提高了模型性能。

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