DocumentCode :
738974
Title :
Pretest Gap Mura on TFT LCDs Using the Optical Interference Pattern Sensing Method and Neural Network Classification
Author :
Tung-Yen Li ; Jang-Zern Tsai ; Rong-Seng Chang ; Li-Wei Ho ; Ching-Fu Yang
Author_Institution :
Dept. of Electr. Eng., Nat. Central Univ., Jhongli, Taiwan
Volume :
60
Issue :
9
fYear :
2013
Firstpage :
3976
Lastpage :
3982
Abstract :
Recently, thin-film transistor liquid crystal displays (TFT LCDs) have had a high demand in the market, which entails careful product quality control and more stringent defect detection procedures. A good defect detection rate is the basic requirement of the quality control process. The use of conventional human visual inspection methods to find the defects in TFT LCDs is simply not accurate enough and consumes a large amount of resources. An automatic defect inspection method is thus necessary for this industry; to find the defects, the type of defects needs to be recognized as well. Here, we propose an inspection procedure based on the optical interference pattern sensing method to find the interference fringes and then use the image processing to enhance the contrast of the interference fringes, thereby increasing the recognition rate for the latter process. The neural network method is used to learn about and identify the defects and their types. This paper focuses on the mura defect inspection and classification method. Before the learning process has begun, the mean squared error was roughly three, but after neural network retraining of these samples, the results showed that the mean squared error was less than 0.01. The defective panels can be sorted out using this method so that the next processing and waste of materials can be avoided.
Keywords :
computerised instrumentation; image classification; image enhancement; image recognition; image sensors; inspection; learning (artificial intelligence); light interference; liquid crystal displays; mean square error methods; neural nets; optical sensors; product quality; quality control; thin film transistors; TFT LCD; automatic defect inspection method; defect detection rate; human visual inspection method; image enhancement; image processing; image recognition rate; interference fringe; learning process; liquid crystal display; mean squared error method; neural network classification; optical interference pattern sensing method; pretest gap mura; product quality control process; thin-film transistor; Image processing; Inspection; Interference; Neural networks; Sealing materials; Thin film transistors; Image process; interference; mura; neural network; thin-film transistor (TFT) liquid crystal (LC) display (LCD) (TFT LCD);
fLanguage :
English
Journal_Title :
Industrial Electronics, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0046
Type :
jour
DOI :
10.1109/TIE.2012.2207658
Filename :
6236141
Link To Document :
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