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Decision support in machine vision system for monitoring of TFT-LCD glass substrates manufacturing

机译:机器视觉系统中用于监控TFT-LCD玻璃基板制造的决策支持

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摘要

This study addresses classification methodology for the automatic inspection of a range of defects on the surface of glass substrates in thin film transistor liquid crystal display glass substrate manufacturing. The proposed methodology consisted of four stages: (1) feature extraction by calculating the wavelet co-occurrence signature from the substrate images, (2) handling of imbalanced dataset using the Synthetic Minority Over-sampling TEchnique (SMOTE), (3) reduction of the feature's dimension by principal component analysis, and (4) finally choosing the best classifier between three different methods: Classification And Regression Tree (CART), Multi-Layer Perceptron (MLP) and Support Vector Machine (SVM). In training the SVM and MLP classifiers, the simulated annealing algorithm was used to obtain the optimal tuning parameters for the classifiers. From the industrial case study, the proposed feature extraction algorithm could remove the defect-irrelevant image features and SMOTE increased the accuracy of all three methods. Furthermore, the optimized SVM and MLP models were more accurate than the CART model whereas a higher accuracy of 89.5% was observed for the proposed SVM model.
机译:这项研究提出了在薄膜晶体管液晶显示器玻璃基板制造中自动检查玻璃基板表面上一系列缺陷的分类方法。所提出的方法包括四个阶段:(1)通过从基底图像计算小波共现签名来进行特征提取;(2)使用合成少数采样技术(SMOTE)处理不平衡数据集;(3)通过主成分分析确定特征的维数,(4)最后在三种不同方法之间选择最佳分类器:分类和回归树(CART),多层感知器(MLP)和支持向量机(SVM)。在训练SVM和MLP分类器时,使用了模拟退火算法来获得分类器的最佳调整参数。从工业案例研究中,提出的特征提取算法可以去除与缺陷无关的图像特征,并且SMOTE可以提高这三种方法的准确性。此外,优化的SVM和MLP模型比CART模型更准确,而建议的SVM模型的准确率达到89.5%。

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