期刊文献+

时-空域多特征证据学习与增强的印染疵点在线检测

On-line detection of the dyed and printed fabric defects by multi-features evidence learning and enhancement in spatiotemporal domain
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摘要 提出了一种基于时空域多特征证据学习与增强的织物印染疵点在线检测新方法。利用多种类纹理特征在特征表达上的互补性以及可疑图像分块前n帧历史的对应特征,达到多证据印证的特征学习与分类增强,是一种比较通用的表面缺陷实时检测解决方法。检测总体思想是从“已知的”无疵点纹理表面提取特征,根据特征对被测织物进行分类比较,从而检测出“未知的”疵点纹理区域。检测过程分为一次性时空域多特征证据自学习和在线分类检测两阶段。对实际织物图像序列的在线检测显示,对单色织物常见印染缺陷的有效检测速度达到了55帧/s(1 024×393像素分辨率仿真视频图像),动态检出正确率达到95%以上。 A novel method of defects detection for dyed and multi-features evidence learning and enhancement in spatiote printed fabrics is presented, which is based on mporal domain. It's a general solution to many real-time surface inspection issues. The mutual compensation of multi-features is used to enhance the defects evidence, and history information of the doubted patches in video sequence is also applied to help checking out what are the true defects. The main idea is to find out the unknown defects by comparing the extracted surface features of the known defect-free fabric with those of the fabric being examined. This inspection divided into two stages : one for the roll-style multi-features learning of the known defect-free textile, the other for real-time surface inspection. Many experiment results of the on-line inspection show that the efficient detection speed reaches 55 frames per second to the image sequence ( 1 024 × 393 pixels) for dyed and printed fabrics of single-color, with a correct dynamic check out rate on surface defects above 95 %.
出处 《纺织学报》 EI CAS CSCD 北大核心 2006年第5期1-5,共5页 Journal of Textile Research
基金 国家自然科学基金资助项目(50545027)
关键词 染整缺陷 实时检测 颜色特征提取 计算机视觉 dyed & printed fabric defects real-time inspection color-feature extraction computer vision
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参考文献13

  • 1Chan Chi-ho,Pang K H Grantham.Fabric defect detection by fourier analysis[J].IEEE Transactions on Industry Applications,2000,36(5):1267-1276.
  • 2Maenpaa T,Turtinen M,Pietikainen M.Real-time surface inspection by texture[J].Real-Time Imaging,2003,9:289-296.
  • 3Kumar Ajay,Pang K H Grantham.Identification of surface defects in textured materials using wavelet packets[A].IEEE Industry Applications Society 36th Annual Meeting,Conference Record of the 2001 IEEE[C].Chicago:IL,2001.247-251.
  • 4Hu M C,Tsai I S.Fabric inspection based on best wavelet packet bases[J].Textile Research Journal,2000,70(8):662-670.
  • 5李立轻,黄秀宝.用于疵点检测的织物自适应正交小波的实现[J].东华大学学报(自然科学版),2002,28(2):77-81. 被引量:19
  • 6贡玉南,华建兴,黄秀宝.基于匹配Gabor滤波器的规则纹理缺陷检测方法[J].中国图象图形学报(A辑),2001,6(7):624-628. 被引量:19
  • 7Bodnarova A,Bennamoun M,Latham S.Optimal Gabor filters for textile flaw detection[J].Pattern Recognition,2002,35(12):2973-2991.
  • 8Kumar Ajay,Pang K H Grantham.Defect detection in textured materials using optimized filters[J].IEEE Transactions on Systems,Man,and Cybernetics-Part B:Cybernetics,2002,32(5):553-570.
  • 9Garcia M A,Domènec Puig.Pixel classification by divergence-based integration of multiple texture methods and its application to fabric defect detection[A].In:Michaelis B,Krell C eds.Lecture Notes in Computer Science 2781,Pattern Recognition,25th DAGM Symposium[C].Springer-Verlag,2003.132-139.
  • 10Ajay Kumar.Neural network based detection of local textile defects[J].Pattern Recognition,2003,36(7):1645-1659.

二级参考文献16

  • 1李见为.自动视觉检测中的启发式图象预处理方法[J].光电工程,1995,22(3):36-42. 被引量:8
  • 2Castleman K R.数字图像处理[M].北京:电子工业出版社,1998.423-430.
  • 3Cohen F,IEEE Trans Pattern Anal Machine Intell,1991年,13卷,8期,803页
  • 4Keller J M,Graphics and Image Processing,1989年,45期,150页
  • 5Chung-Feng Jeffrey Kuo et al. A Back- Propagation Neural Network for Recognizing Fabric Defects. Textile Research Journal,2003(2):147-151.
  • 6Dewaele P,Gool L Van,Wambacq P et al.Texture inspection with self -adaptive convolution filters[].In: Proceedings of the Ninth International Conference on Pattern Recognition Rome.1998
  • 7Warren J J,Garnier S J,Potlapalli H.Texture characterization and defect detection using adaptive wavelets[].Optical Engineering.1996
  • 8Jain A K,Farrokhnia F.Unsupervised texture segmentation using gabor filters[].Pattern Recognition.1991
  • 9Teuner A,Picjler O.Unsupervised texture segmentation of images using tuned matched gabor filters[].IEEE Transactions on Image Processing.1995
  • 10Bovik C.Analysis of multichannel narrowband filters for image texture segmentation[].IEEE Transactions on Signal Processing.1991

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