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A Selective Multiclass Support Vector Machine Ensemble Classifier for Engineering Surface Classification Using High Definition Metrology

机译:使用高清计量学的工程表面分类的选择性多类支持向量机集成分类器

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摘要

The surface appearance is sensitive to change in the manufacturing process and is one of the most important product quality characteristics. The classification of workpiece surface patterns is critical for quality control, because it can provide feedback on the manufacturing process. In this study, a novel classification approach for engineering surfaces is proposed by combining dual-tree complex wavelet transform (DT-CWT) and selective ensemble classifiers called modified matching pursuit optimization with multiclass support vector machines ensemble (MPO-SVME), which adopts support vector machine (SVM) as basic classifiers. The dual-tree wavelet transform is used to decompose three-dimensional (3D) workpiece surfaces, and the features of workpiece surface are extracted from wavelet sub-bands of each level. Then MPO-SVME is developed to classify different workpiece surfaces based on the extracted features and the performance of the proposed approach is evaluated by computing its classification accuracy. The performance of MPO-SVME is validated in case study, and the results demonstrate that MPO-SVME can increase the classification accuracy with only a handful of selected classifiers.
机译:表面外观对制造过程中的变化敏感,并且是最重要的产品质量特征之一。工件表面图案的分类对于质量控制至关重要,因为它可以提供有关制造过程的反馈。在这项研究中,通过将双树复小波变换(DT-CWT)和选择性集成分类器(称为改进的匹配追踪优化)与多类支持向量机集成(MPO-SVME)相结合,提出了一种工程表面分类的新方法,该方法采用了支持向量机(SVM)作为基本分类器。使用双树小波变换分解三维(3D)工件表面,并从每个级别的小波子带中提取工件表面的特征。然后,基于提取的特征,开发了MPO-SVME对不同的工件表面进行分类,并通过计算其分类精度来评估所提出方法的性能。案例研究验证了MPO-SVME的性能,结果表明,MPO-SVME仅使用少数几个分类器即可提高分类精度。

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