Vision-Based Defects Detection for Glass Production based on Improved Image Processing Method
Abstract
Defect is a failure that harms the value, quality or function of a product. In glass manufacturing industry, production defects directly contributes to low quality and a failure for the organization. It will be tiresome process to have manual inspection especially for a large size of glass product. Furthermore, manual inspection processes are typically time consuming and exposed to human error. This article presents a vision-based inspection to detect glass defects using image processing techniques. The result obtained shows that defects can be successfully detected based on the method used.
Downloads
References
K. S. Cheung, “Modelling and analysis of manufacturing systems using augmented marked graphs,” Information Technology and Control, vol. 35, no. 1, pp. 19-26, 2006.
D. Mery and O. Medina, “Automated Visual Inspection of Glass Bottles Using Adapted Median Filtering,” in International Conference of Image Analysis and Recognition, 2004, pp. 818-825.
M. Petrou and C. Petrou, Image Processing: the fundamentals, 2nd edition. UK: Wiley, 2010.
T. Sumeet Singh and K. Sukhpreet, “Study on Various Glass Defect Using SIFT,” International Journal of Innovations in Engineering and Technology, vol. 2, no. 4, pp. 316-326, 2013.
J. Ai and X. Zhu, “Analysis and detection of ceramic-glass surface defects based on computer vision”, in Proceeding the 4th World Congress on Intelligent Control and Automation, 2002, pp. 3014-3018.
Nishu and S. Agrawal, “Glass Defect Detection Techniques using Digital Image Processing –A Review,” International Journal of Computer Application, Special Issue on IP Multimedia Communications, pp. 65-67, 2011.
B. Akdemir, and S. Öztürk, “Glass Surface Defects Detection with Wavelet Transforms,” International Journal of Materials, Mechanics and Manufacturing, vol. 3, no. 3, pp. 170-173, 2015.
H.M. Ma, G.D. Su, J.Y. Wang and Z. Ni, “A glass bottle defect detection system without touching,” in Proceedings of International Conference on Machine Learning and Cybernetics, 2002, pp. 628-632.
B. İzmirlioğlu and S. Yılmaz, “Glass melting furnace refractories and refractory related defects,”Journal of Chemical Technology and Metallurgy, vol. 50, no. 4, pp. 404-410, 2015.
S. Tribhuwan, L. Rajeshwar, S. Agrawal and A. Acharya, “Detection of Defects in Glass Sheet using C.S.C based Segmentation Method,”International Journal of Computer Applications, vol. 68, no.14, pp. 29-32, 2013.
J. Zhao, X. Zhao and Y. Liu, “A Method for Detection and Classification of Glass Defects in Low Resolution Images,” in Sixth International Conference on Image and Graphics, 2011, pp.642-647.
M. Shimizu, A. Ishii and T. Nishimura, “Detection of Foreign Material Included in LCD Panels,” in IECON 26th Annual Conference of the IEEE on Industrial Electronics Society, 2000, pp. 836-841.
M. A. Coulthard. “Image Processing for Automatic Surface Defect Detection,” In Third International Conference on Image Processing and its Applications, 1989, pp. 192-196.
F. Adamo, F. Attivissimo, A. D. Nisio and M. Savino, “A low-cost inspection system for online defects assessment in satin glass,” Measurement, vol. 42, no. 9, pp. 1304-1311, 2009.
N. Awang, M.H.F.M. Fauadi and N.S. Rosli, “Image Processing of Product Surface Defect Using Scilab," Applied Mechanics and Materials,” vol. 789-790, pp. 1223-1226, 2015.
N.S. Rosli, M.H.F.M. Fauadi, N. Awang, “Some Technique for an Image of Defect in Inspection Process Based on Image Processing,” Journal of Image and Graphics, vol. 4, no. 1 pp. 55-58, 2016.
X. Peng, Y. Chen, W. Yu, Z. Zhou and G. Sun, “An online defects inspection method for float glass fabrication based on machine vision,” The International Journal of Advanced Manufacturing Technology, vol. 39, no. 11, pp. 1180-1189, 2008.
J.D.D. Cabral and S.A. de Araújo, “An intelligent vision system for detecting defects in glass products for packaging and domestic use,” The International Journal of Advanced Manufacturing Technology, vol. 77 no. 1-4, pp. 485-494, 2015.
Brazilian Association of Technical Norms–ABNT. (2002). NBR 14910:2002—glass packaging for food products [Online]. Available: http://www.abntcatalogo.com.br/
H. F. Fauadi, M. H. Nordin and Z. M. Zainon, “Frontal obstacle avoidance of an autonomous subsurface vehicle (ASV) using fuzzy logic method,” in International Conference of Intelligence Advance System, 2007, pp. 125–128.
M.H.F.B.M. Fauadi, W.L. Li and T. Murata, “Combinatorial auction method for decentralized task assignment of multiple-loading capacity AGV based on intelligent agent architecture,” in IEEE 2nd International Conference of Innovation Bio-Inspired Computer Application, 2011, pp. 207–211.