首页 | 本学科首页   官方微博 | 高级检索  
     

基于Gabor滤波器组与BP神经网络的帘子布疵点检测研究与实现
引用本文:张五一,杨扬,林聪,温盛军.基于Gabor滤波器组与BP神经网络的帘子布疵点检测研究与实现[J].郑州纺织工学院学报,2014(3):1-6.
作者姓名:张五一  杨扬  林聪  温盛军
作者单位:中原工学院,郑州450007
基金项目:国家自然科学基金项目(61074022)
摘    要:采用Gabor滤波器组对帘子布疵点图像纹理进行滤波,对滤波后的模值图像使用最大熵阈值分割,提取疵点轮廓的长、宽、长宽比、面积等特征值。将上述特征值归一化后分为两类:一类作为训练样本输入BP神经网络,对网络进行训练学习,网络计算结果收敛后结束训练;另一类作为测试样本对训练好的网络进行疵点识别。实验证明,该方法可以快速地检测疵点,利用训练的BP神经网络实现疵点分类,识别率达94%。

关 键 词:Gabor滤波器组  最大熵阈值分割  疵点特征  BP神经网络  OpenCV

Method of Fabric Defects Detection Based on Gabor Filters and BP Neural Network
ZHANG Wu-yi,YANG Yang,LIN Cong,WEN Sheng-jun.Method of Fabric Defects Detection Based on Gabor Filters and BP Neural Network[J].Journal of Zhengzhou Textile Institute,2014(3):1-6.
Authors:ZHANG Wu-yi  YANG Yang  LIN Cong  WEN Sheng-jun
Affiliation:(Zhongyuan University of Technology, Zhengzhou 450007, China)
Abstract:In this paper, Gabor filters on cord fabric defects texture filtering and take an amplitude as out- put image, uses maximum entropy to segment the amplitude image, extract length, width, aspect ratio, size as a characteristics, then normalized the characteristics and divided into two categories, one category as the train- ing sample input training and learning of BP neural network- when the network converged end of the training, the other as a test sample to the trained network for defect detection. Experiments show that this method can quickly detect defects, the trained BP neural network to achieve a good defect classification, recognition rate of 94%.
Keywords:Gabor filters maximum entropy threshold  defect characters BP neural network OpenCV
本文献已被 维普 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号