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Automatic Inspection of TFT-LCD Glass Substrates Using Optimized Support Vector Machines

机译:使用优化支持向量机自动检查TFT-LCD玻璃基板

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The visual appearance of manufactured products is often one of the important quality attributes for certain types of products, which are mainly used for display purposes or used as the exterior part of other products. TFT-LCD (thin film transistor - liquid crystal display) glass substrates can be one of the representative cases. In such cases, visual quality (i.e., visual appearance) as well as the physical or mechanical quality attributes has to be controlled or maintained. This paper presents an industrial case study of a new machine vision methodology to manufacturing of TFT-LCD glass substrates. In this case study, we developed a classification model using support vector machine (SVM), optimized via the simulated annealing (SA) algorithm. We also used parallel genetic algorithm to reduce the number of features for classification. The results show that utilization of optimized SVM approach with SA in classification of TFT-LCD glass defects could be a viable alternative to manual classification in the TFT-LCD glass substrate industry.
机译:制造产品的视觉外观通常是某些产品的重要品质属性之一,主要用于显示目的或用作其他产品的外部。 TFT-LCD(薄膜晶体管 - 液晶显示器)玻璃基板可以是代表性案例之一。在这种情况下,必须控制或维持视觉质量(即视觉外观)以及物理或机械质量属性。本文介绍了对TFT-LCD玻璃基板制造的新机器视觉方法的工业案例研究。在这种情况下,我们开发了一种使用支持​​向量机(SVM)的分类模型,通过模拟退火(SA)算法优化。我们还使用并行遗传算法来减少分类的特征数量。结果表明,在TFT-LCD玻璃缺陷分类中,利用SA的优化SVM方法可以是TFT-LCD玻璃基板工业中手动分类的可行替代方案。

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