期刊文献+

基于Gabor小波和核保局投影算法的表面缺陷自动识别方法 被引量:21

Automatic Recognition Method of Surface Defects Based on Gabor Wavelet and Kernel Locality Preserving Projections
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摘要 研究了Gabor小波变换和核保局投影(Kernel locality preserving projections,KLPP)算法的原理,分析了热轧钢板表面缺陷的特点,提出了一种基于Gabor小波和KLPP算法的特征提取方法,并应用于热轧钢板表面缺陷自动识别.首先利用Gabor小波将图像分解到5个尺度8个方向的40个分量中,接着对原始图像和各个分量的实部和虚部分别提取均值和方差,得到一个162维的特征向量,然后利用KLPP算法将该特征向量的维数降到21维,最后利用多层感知器网络对样本进行分类识别.本文提出的特征提取方法具有计算简单、可并行处理的特点,对沿一定方向分布的边缘和纹理具有较高的区分能力.利用从工业现场采集的缺陷图像对本文方法进行了实验,识别率达到93.87%. Principles of Gabor wavelet transform and kernel locality preserving projections(KLPP) are studied and characteristics of surface defects on hot-rolled steel plates are analyzed.A feature extraction method based on Gabor wavelet and KLPP is presented and applied to automatic recognition of hot-rolled steel plate surface defects.Surface images is decomposed into 40 complex-value components at 5 scales and 8 orientations by Gabor wavelet transform,then means and standard deviations of real parts and imaginary parts of the components and the original image are calculated as features respectively to produce a feature vector with 162 dimensions,which is then reduced to 21 dimensions by KLPP.A multi-layer perceptron classifier is constructed to classify the samples with the 21-dimensional feature vector.The feature extraction method presented in this paper has low computational complexity,high computational parallelism,and can discriminate edges and textures along different directions.The method is examined with samples of surface defects captured from a hot-rolled steel plate production line,and the classification rate is 93.87%.
出处 《自动化学报》 EI CSCD 北大核心 2010年第3期438-441,共4页 Acta Automatica Sinica
基金 国家自然科学基金(60705017) "十一五"国家科技支撑计划(2006BAE03A06)资助~~
关键词 GABOR小波 核保局投影 表面检测 特征提取 降维 Gabor wavelet kernel locality preserving projections(KLPP) surface detection feature extraction dimension reduction
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参考文献12

  • 1宋强,徐科,徐金梧.基于结构谱的中厚板表面缺陷识别方法[J].北京科技大学学报,2007,29(3):342-345. 被引量:7
  • 2徐科,陈鲲鹏,杨朝霖,周鹏,高阳.最优尺度分形维数在热轧带钢表面缺陷识别中的应用[J].冶金设备,2008(2):1-4. 被引量:6
  • 3李文峰,徐科,杨朝霖,高阳,周鹏.中厚板表面缺陷在线检测系统的分类器设计[J].钢铁,2006,41(4):47-50. 被引量:5
  • 4Daugman J G. Two-dimensional spectral analysis of cortical receptive field profiles. Vision Research, 1980, 20(10): 847-856.
  • 5He X F, Niyogi P. Locality preserving projections. Advances in Neural Information Processing Systems 18. Vancouver: MIT Press, 2005.
  • 6Shawe-Taylor J, Cristianini N. Kernel Methods for Pattern Analysis. Cambridge: Cambridge University Press, 2004.
  • 7Lades M, Vorbruggen J V, Buhmann J, Lange J, yon der Malsburg C, Wurtz R P. Distortion invariant object recognition in the dynamic link architecture. IEEE Transactions on Computers, 1993, 42(3): 300-311.
  • 8Roweis S T, Saul L K. Nonlinear dimensionality reduction by loacally linear embedding. Science, 2000, 290(5500): 2323-2326.
  • 9Belkin M, Mikhail P. Laplacian eigenmaps and spectral techniques for embedding and clustering. Advances in Neural Information Processing Systems 14. Cambridge: MIT Press, 2002.
  • 10He X F. Locality Preserving Projections [Ph. D. dissertation], The University of Chicago, USA, 2005.

二级参考文献21

  • 1张涛,杨志标,黄爱民.一种改进的遥感图像分形维数提取算法[J].军械工程学院学报,2006,18(5):61-65. 被引量:7
  • 2梁治国,徐科,徐金梧.基于线型激光的钢板表面缺陷三维检测技术[J].北京科技大学学报,2004,26(6):662-665. 被引量:6
  • 3宋强,徐科,徐金梧.基于结构谱的中厚板表面缺陷识别方法[J].北京科技大学学报,2007,29(3):342-345. 被引量:7
  • 4张乃尧,阎平凡.神经网络与模糊控制[M].第四版.北京:清华大学出版社,2002.14.
  • 5Pregenzer M,Pfruitscheller G,Flotzinger D.Automated Feature Selection With a Distinction Sensitive Learning Vector Quantizer[J].Neurocomputing,1996,(11):19-29.
  • 6Mohhamad-Taghi,Vakil-Baghmisheh,Nikola Pavesic.Premature Clustering Phenomenon and New Training Algorithms for LVQ[J].Pattern Recognition,2003,(36):190-191.
  • 7Bharati M H,Liu J J,MacGregor J F.Image texture analysis:methods and comparisons.Chemom Intell Lab Syst,2004,72:57.
  • 8Gonzalez R C,Woods R E.数字图像处理.2版.阮秋琦,阮宇智,译.北京:电子工业出版社,2003.
  • 9Ojala T,Pietik(a)inen M,M(a)enp(a)(a) T.Multiresolution gray scale and rotation invariant texture analysis with local binary patterns.IEEE Trails Pattern Anal Mach Intell,2002,24(7):971.
  • 10Ojala T,Valkealahti K,Oja E,et al.Texture discrimination with multi-dimensional distributions of signed gray level differences.Pattern Recognit,2001,34:727.

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