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Please use this identifier to cite or link to this item: http://ntour.ntou.edu.tw:8080/ir/handle/987654321/27735

Title: In-array-process micro-defect inspection for liquid crystal displays with nonlinear principal component analysis
Authors: Yi-Hung Liu;Chi-Kai Wang;Yung Ting;Wei-Zhi Lin;Zhi-Hao Kang;Ching-Shun Chen;Jih-Shang Hwang
Contributors: NTOU:Institute of Optoelectronic Sciences
國立臺灣海洋大學:光電科學研究所
Keywords: thin film transistor liquid crystal display;TFT array process;automatic optical inspection;defect inspection;kernel principal component analysis;support vector machine
Date: 2009-10
Issue Date: 2011-10-21T02:33:18Z
Publisher: International Journal of Molecular Sciences
Abstract: Abstract:Defect inspection plays a critical role in thin film transistor liquid crystal display (TFT-LCD) manufacture, and has received much attention in the field of automatic optical inspection (AOI). Previously, most focus was put on the problems of macro-scale Mura-defect detection in cell process, but it has recently been found that the defects which substantially influence the yield rate of LCD panels are actually those in the TFT array process, which is the first process in TFT-LCD manufacturing. Defect inspection in TFT array process is therefore considered a difficult task. This paper presents a novel inspection scheme based on kernel principal component analysis (KPCA) algorithm, which is a nonlinear version of the well-known PCA algorithm. The inspection scheme can not only detect the defects from the images captured from the surface of LCD panels, but also recognize the types of the detected defects automatically. Results, based on real images provided by a LCD manufacturer in Taiwan, indicate that the KPCA-based defect inspection scheme is able to achieve a defect detection rate of over 99% and a high defect classification rate of over 96% when the imbalanced support vector machine (ISVM) with 2-norm soft margin is employed as the classifier. More importantly, the inspection time is less than 1 s per input image.
Relation: 10(10), pp.4498-4514
URI: http://ntour.ntou.edu.tw/handle/987654321/27735
Appears in Collections:[光電科學研究所] 期刊論文

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