首页> 外文期刊>International Journal of Intelligent Systems and Applications >An Empirical Method for Optimization of Counterpropagation Neural Network Classifier Design for Fabric Defect Inspection
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An Empirical Method for Optimization of Counterpropagation Neural Network Classifier Design for Fabric Defect Inspection

机译:织物缺陷检测的反向传播神经网络分类器设计优化的经验方法

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摘要

Automated, i.e. machine vision based fabric defect inspection systems have been drawing plenty of attention of the researchers in order to replace manual inspection. Two difficult problems are mainly posed by automated fabric defect inspection systems. They are defect detection and defect classification. Counterpropagation neural network (CPN) is a robust classifier 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 CPN; but in particular, no claimed has been made for successful application of CPN for fabric defects detection and classification. In those published works, no investigation has been reported regarding to the variation of major performance parameters of NN based classifiers such as learning 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 CPN based in particular. Our work focuses on empirical investigation of interrelationship between design parameters and performance of CPN based classifier for fabric 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 CPN based classifier.
机译:自动化,即基于机器视觉的织物缺陷检查系统已经引起研究人员的广泛关注,以代替人工检查。自动织物缺陷检查系统主要带来两个难题。它们是缺陷检测和缺陷分类。反向传播神经网络(CPN)是一个强大的分类器,对于缺陷分类非常有前途。总体而言,迄今为止报道的作品声称通过CPN在检测和分类不同类型的缺陷方面取得了不同程度的成功;但是特别地,没有要求将CPN成功地用于织物缺陷检测和分类。在那些已发表的著作中,没有关于基于神经网络的分类器的主要性能参数的变化的任何报道的报告,例如基于网络拓扑和训练参数的学习时间和分类精度。结果,应用工程师几乎没有指导甚至没有指导来做出设计决策,以实现一般的基于NN的缺陷分类器,尤其是基于CPN的最优结构。我们的工作重点是基于设计参数和基于CPN的织物疵点分类器性能之间的相互关系的实证研究。可以相信,这样的工作将为使应用工程师能够决定设计参数的最佳值奠定基础,以实现最合适的基于CPN的分类器。

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