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The Density Fraction Estimation of Coarse Coal by Use of the Kernel Method and Machine Vision

机译:基于核方法和机器视觉的粗煤密度分数估算

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摘要

Coal density distribution is one of the most important production indexes in coal preparation processes, but its traditional measure is time consuming. A fast and efficient method to estimate the density fraction of coal particles becomes an urgent problem. This article proposed a prediction method of density fractions of coarse coal by use of kernel methods and machine vision. Coal particle images were segmented and identified by a multi-scale image segmentation algorithm based on the Hessian Matrix. Thirty-two features, including gray information and texture information, were extracted. The 3a principle in statistics was applied to remove the abnormal points existing in features of each density fraction, and then all features were normalized. Kernel principal component analysis was used to reduce the data dimensions and the first two principle components were determined as the input of the support vector machine to predict the density fractions of coal particles. The best support vector machine parameters of c and g were determined by the method of K-fold cross validation. Through five tests, the prediction accuracy of training data reaches 84.67%, and the prediction accuracy of test data reaches 81.2%. Results indicated that the kernel method of kernel principal component analysis and support vector machine is able to predict the density fractions of overlap coarse coal.
机译:煤密度分布是选煤过程中最重要的生产指标之一,但传统的测量方法很费时间。快速有效地估算煤颗粒密度分数的方法已成为迫在眉睫的问题。本文提出了一种基于核方法和机器视觉的粗煤密度分数预测方法。通过基于Hessian矩阵的多尺度图像分割算法对煤颗粒图像进行分割和识别。提取了包括灰度信息和纹理信息在内的32个特征。应用统计学中的3a原理去除每个密度分数特征中存在的异常点,然后对所有特征进行归一化。使用核主成分分析来减少数据量,并确定前两个主成分作为支持向量机的输入,以预测煤颗粒的密度分数。通过K折交叉验证的方法确定c和g的最佳支持向量机参数。经过五次测试,训练数据的预测准确度达到84.67%,测试数据的预测准确度达到81.2%。结果表明,核主成分分析和支持向量机的核方法能够预测出重叠煤的密度分数。

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