An Empirical Approach to Optimize Design of Backpropagation Neural Network Classifier for Textile Defect Inspection

Automated fabric inspection systems have been drawing plenty of attention of the researchers in order to replace manual inspection. Two difficult problems are mainl y posed by automated fabric inspection systems. They are defect detection and defect classification. Backpropagation is a popular learning algorithm and very promising for defect classification. In general, works reported to date have claimed varying level of successes in detection and classification of different types of defects through backpropagation model. In those published works, no investigation has been reported regarding to the variation of major performance parameters of neural network (NN) based classifiers such as training time and classification accuracy based on network topology and training parameters. As a result, application engineer has little or no guidance to take design decisions for reaching to optimum structure of NN based defect classifiers in general and backpropagation based in particular. Our work focuses on empirical investigation of interrelationship between design parameters and performance of backpropagation based classifier for textile defect classification. It is believed that such work will be laying the ground to empower application engineers to decide about optimum values of design parameters for realizing most appropriate backpropagation based classifier.

[1]  Alper Baykut,et al.  Real-time Defect Inspection of Textured Surfaces , 2000, Real Time Imaging.

[2]  Ajay Kumar,et al.  Computer-Vision-Based Fabric Defect Detection: A Survey , 2008, IEEE Transactions on Industrial Electronics.

[3]  Zhigang Fan,et al.  Rotation and scale invariant texture classification , 1988, Proceedings. 1988 IEEE International Conference on Robotics and Automation.

[4]  Thomas S. Huang,et al.  Image processing , 1971 .

[5]  Thanos Stouraitis,et al.  Defect detection and classification on web textile fabric using multiresolution decomposition and neural networks , 1999, ICECS'99. Proceedings of ICECS '99. 6th IEEE International Conference on Electronics, Circuits and Systems (Cat. No.99EX357).

[6]  Dimitris A. Karras,et al.  Supervised and unsupervised neural network methods applied to textile quality control based on improved wavelet feature extraction techniques , 1998, Int. J. Comput. Math..

[7]  E. Shady,et al.  Detection and Classification of Defects in Knitted Fabric Structures , 2006 .

[8]  Daniel T. Larose,et al.  Discovering Knowledge in Data: An Introduction to Data Mining , 2005 .

[9]  George Papadopoulos,et al.  Real-time vision system for defect detection and neural classification of web textile fabric , 1999, Electronic Imaging.

[10]  Hazem M. Abbas,et al.  Automated vision system for localizing structural defects in textile fabrics , 2005, Pattern Recognit. Lett..

[11]  Atiqul Islam,et al.  Automated Textile Defect Recognition System Using Computer Vision and Artificial Neural Networks , 2008 .

[12]  Raúl Rojas,et al.  Neural Networks - A Systematic Introduction , 1996 .

[13]  Masoud Latifi,et al.  Computer Vision-Aided Fabric Inspection System for On-Circular Knitting Machine , 2005 .

[14]  M. Rokonuzzaman,et al.  Distinguishing Feature Selection for Fabric Defect Classification Using Neural Network , 2011, J. Multim..

[15]  Stavros A. Koubias,et al.  Real-Time Vision-Based System for Textile Fabric Inspection , 2001, Real Time Imaging.

[16]  Kishan G. Mehrotra,et al.  Elements of artificial neural networks , 1996 .

[17]  Lapo Governi,et al.  The recycling of wool clothes: an artificial neural network colour classification tool , 2008 .

[18]  Lapo Governi,et al.  Neural Network based classification of car seat fabrics , 2011 .

[19]  C. J. Kuo,et al.  A Back-Propagation Neural Network for Recognizing Fabric Defects , 2003 .

[20]  Md. Tarek Habib,et al.  A Set of Geometric Features for Neural Network-Based Textile Defect Classification , 2012 .

[21]  H.Y.K. Lau,et al.  A real-time computer vision system for detecting defects in textile fabrics , 2005, 2005 IEEE International Conference on Industrial Technology.