Prediction of Iron Ore Spheroidity Based on Image Texture Features and PCA-SVR

Daifei Liu, Shengyang Wang
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Abstract

Spheroidity is an important parameter to describe the granulation characteristics of iron ore. Traditionally, physical and chemical analysis methods are used to obtain the spheroidization of iron ore. However, these processes are time-consuming and labor-intensive, and it is difficult to control the accuracy of the results. In this study, image processing and neural networks are used to construct a support vector regression (SVR) iron ore sphericity prediction model from the perspective of information fusion. Three kinds of image texture feature extraction methods are used: Tamura texture feature, gray level co-occurrence matrix (GLCM), and gray level difference statistics (GLDS). Principal component analysis are used to dimensionality reduction of image texture feature parameters. Under the same operating conditions, the results using the SVR model with and without PCA are compared, and the prediction accuracy of these models for iron ore spheroidity are 96.7% and 79.8%, respectively. The results show that the model based on image texture features and PCA-SVR has excellent characteristics, such as fast operating time and high accuracy, for the prediction of iron ore spheroidity, has practical significance in guiding the sintering process of iron ore and can provide further efficient and accurate research on iron ore spheroidity in the future.
基于图像纹理特征和PCA-SVR的铁矿石球度预测
球化度是描述铁矿石造粒特性的重要参数,传统上采用物理和化学分析方法来获得铁矿石的球化,但这些过程耗时费力,且难以控制结果的准确性。本研究从信息融合的角度出发,采用图像处理和神经网络相结合的方法,构建了支持向量回归(SVR)铁矿球度预测模型。采用了Tamura纹理特征、灰度共生矩阵(GLCM)和灰度差统计(GLDS)三种图像纹理特征提取方法。采用主成分分析法对图像纹理特征参数进行降维。在相同操作条件下,比较了加PCA和不加PCA的SVR模型对铁矿石球度的预测精度分别为96.7%和79.8%。结果表明,基于图像纹理特征和PCA-SVR的模型对铁矿球度预测具有运行时间快、精度高等优良特点,对指导铁矿烧结工艺具有实际意义,可为今后进一步高效、准确地研究铁矿球度提供依据。
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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