A real time marking inspection scheme for semiconductor industries

In this paper, a real time industrial machine vision system incorporating optical character recognition (OCR) is employed to inspect markings on integrated circuit (IC) chips. This inspection is carried out while the ICs are coming out from the manufacturing line. A TSSOP-DGG type of IC package from Texas Instruments is used in the investigation. The IC chip markings are laser printed. This inspection system tests whether the laser printed marking on IC chips is proper. The inspection has to identify print errors such as illegible characters, missing characters and upside down printing. The vision inspection of the printed markings on the IC chip is carried out in three phases, namely, image preprocessing, feature extraction and classification. The MATLAB platform and its toolboxes are used for designing the inspection processing technique. Speed of the marking inspection is mostly dependent on the effectiveness of the feature extraction technique. The performances of four feature extraction techniques are compared in terms of their respective speed. The feature extracted data are used in a neural network for classifying the marking errors. A suggestion to optimize the number of input neurons of the neural network for a fast classification is also presented.

[1]  Anil K. Jain,et al.  Feature extraction methods for character recognition-A survey , 1996, Pattern Recognit..

[2]  Bernard Widrow,et al.  30 years of adaptive neural networks: perceptron, Madaline, and backpropagation , 1990, Proc. IEEE.

[3]  Bum-Jae You,et al.  Development of a well-structured industrial vision system , 1990, [Proceedings] IECON '90: 16th Annual Conference of IEEE Industrial Electronics Society.

[4]  Christopher R. Dance,et al.  Binarising camera images for OCR , 2001, Proceedings of Sixth International Conference on Document Analysis and Recognition.

[5]  R. Nagarajan IC chip marking inspection using neural network , 2004 .

[6]  Guangshun Shi,et al.  A system for automatic Chinese business card recognition , 2001, Proceedings of Sixth International Conference on Document Analysis and Recognition.

[7]  J. M. Hans du Buf,et al.  Contour profiling by dynamic ellipse fitting , 2000, Proceedings 15th International Conference on Pattern Recognition. ICPR-2000.

[8]  Adnan Amin,et al.  Hand-printed arabic character recognition system using an artificial network , 1996, Pattern Recognit..

[9]  J. Mantas,et al.  An overview of character recognition methodologies , 1986, Pattern Recognit..

[10]  M. Buscema,et al.  Introduction to artificial neural networks. , 2007, European journal of gastroenterology & hepatology.

[11]  Nasser Sherkat,et al.  Zoning invariant holistic recognizer for hybrid recognition of handwriting , 1995, Proceedings of 3rd International Conference on Document Analysis and Recognition.

[12]  Rolf Ingold,et al.  Optical Font Recognition from Projection Profiles , 1993, Electron. Publ..

[13]  Ching Y. Suen,et al.  Historical review of OCR research and development , 1992, Proc. IEEE.

[14]  Roland T. Chin,et al.  On Image Analysis by the Methods of Moments , 1988, IEEE Trans. Pattern Anal. Mach. Intell..

[15]  Laurene V. Fausett,et al.  Fundamentals Of Neural Networks , 1993 .

[16]  Clifford Lau,et al.  Neural Networks: Theoretical Foundations and Analysis , 1991 .