Development of online machine vision system using support vector regression (SVR) algorithm for grade prediction of iron ores

A. K. Patel, S. Chatterjee, A. Gorai
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引用次数: 10

Abstract

The present study attempts to develop a machine vision system for continuous monitoring of grades of iron ores during transportation through conveyor belts. The machine vision system was developed using the support vector regression (SVR) algorithm. A radial basis function (RBF) kernel was used for the development of optimized hyperplane by transforming input space into large dimensional feature space. A set of 39-image features (27-colour and 12-texture) were extracted from each of the 88-captured images of iron ore samples. The grade values of iron ore samples corresponding to the 88-captured images were analyzed in the laboratory. The SVR model was developed using the optimized feature subset obtained using a genetic algorithm. The correlation coefficient between the actual grades and model predicted grades for testing samples was found to be 0.8244.
基于支持向量回归(SVR)算法的铁矿品位在线机器视觉预测系统的开发
本研究试图开发一种机器视觉系统,用于在输送带运输过程中连续监测铁矿石的品位。采用支持向量回归(SVR)算法开发了机器视觉系统。利用径向基函数(RBF)核将输入空间转化为大维特征空间,开发优化超平面。从捕获的88张铁矿石样本图像中提取出一组39张图像特征(27张彩色图像和12张纹理图像)。在实验室中分析了88张捕获图像对应的铁矿石样品品位值。利用遗传算法优化得到的特征子集,建立支持向量回归模型。测试样本的实际等级与模型预测等级的相关系数为0.8244。
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