《Parallel Distributed Processing : Explorations in the Microstructure ofCognition》
[1986]
ªRatio Regions : A Technique for Image Segmentation
[1997]
ªEigenvalues and Graph Bisection : An AverageCase Analysis
pp . 280-285[1987]
ªA Lower Bound for the Smallest Eigenvalue of the Laplacian , º Problems in Analysis , R.C . Gunning , ed.
pp . 195-199[1970]
[88] G. Paschos, P. Kimon, and P. Valavanis. A color texture based monitoring system for automated surveillance. IEEE Transactions on Systems, Man, and Cybernetics - Part C, 29(1):298?307, 1999.
[87] D. Panjwani and G. Healey. Markov random field models for unsupervised segmentation of textured color images. IEEE Transactions on Pattern Analysis and Machine Intelligence, 17(10):939?954, 1995.
[85] S. Ozdemir and A. Ert¨uz¨un. Markov random field and Karhunen-L ¨ o`eve transforms for defect inspection of textile products. In IEEE Conference on Emerging Technologies and Factory Automation, volume 2, pages 697?703, 1996.
[80] P. Ohanian and R. Dubes. Performance evaluation for four classes of textural features. Pattern Recognition, 25(8):819?833, 1992.
[7] Marketsandmarkets, Machine vision market,2017
[77] T. Newman and A. Jain. A survey of automated visual inspection.Computer Vision and Image Understanding, 61(2):231?262, 1995. H. Ng. Automatic thresholding for defect detection. Pattern Recognition Letters, 27:1644?1649, 2007.
61 ( 2 ) :231 ? 262[1995]
[72] M. Mirmehdi and M. Petrou. Segmentation ofColor textures. IEEE Transactions on Pattern Analysis and Machine Intelligence, 22(2):142?159, 2000.
22 ( 2 ) :142 ? 159[2000]
[68]C. Mandriota, M. Nitti, N. Ancona, E. Stella, and A. Distante. Filter-based feature selection for rail defect detection. Machine Vision and Applications, 15:179?185, 2004.
185[2004]
[67] B. Mandelbrot. The Fractal Geometry of Nature. W.H. Freeman, 1983.
[1983]
[66] B. Mallick-Goswami and A. Datta. Detecting defects in fabric with laser-based morphological image processing. Textile Research Journal, 70:758? 762, 2000.
[65] J. Malik and P. Perona. Preattentive texture discrimination with early vision mechanisms. Journal of the Optical Society of America, Series A, 7:923?932, 1990.
[62] T. M¨aenp¨a¨a and M. Pietik¨ainen. Texture analysis with local binary patterns. In C. Chen and P. Wang, editors, Handbook of Pattern Recognition and Computer Vision, pages 197?216. World Scientific, 3 edition, 2005.
[58] Lopez, J. Valiente, R. Baldrich, and M. Vanrell. Fast surface grading usingColor statistics in theCIE Lab space. In IberianConference on Pattern Recognition and Image Analysis (LNCS 3523), volume 2, pages 666?673, 2005.
volume 2 , pages 666 ? 673[2005]
[51] M. J. Fadili, J. L. Starck and F. Murtagh, “Inpainting and zooming using sparse representations,” Computer Journal, Vol. 52, No. 1, pp. 64?79, 2009.
[36] Nontexture inpainting by curvature-driven diffusions,” Journal of Visual Communication and Image Representation, Vol. 12, No. 4, pp. 436?449, 2001.
[35] Bertalmio, G. Sapiro, V.Caselles andC. Ballester, “Image inpainting,” Proceeding of ACM SIGGRAPHConference onComputer Graphics, pp. 417?424, New Orleans, LA, July 2000. T. F.Chan and J. Shen,
pp . 417 ? 424[2000]
[31] A. Blake and A. Zisserman, Visual Reconstruction. MIT Press, 1987.
[27] Goodfellow, Ian, et al. "Generative adversarial nets.Advances in neural information processing systems. 2014.
Wavelets and Their Applications for Surface Metrology
57 ( 1 ) :555 ? 558[2008]
Visual Inspection of Machined Metallic HighPrecision Surfaces
[2002]
Unsupervised Segmentation of Natural Images via Lossy Data Compression
vol . 110 , pp . 212-225,2008
Towards Efficient Texture Classification and Abnormality Detection
[2004]
Total variation wavelet inpainting
Vol . 15 , No . 1 , pp . 107 ? 125[2006]
Theory of Edge Detection
[1980]
The perceptron : a probabilistic model for information storage and organization in the brain.
No . 6 , pp . 386 ? 408 . doi 10.1037/h0042519 .[1958]
Texture classification and segmentation using multiresolution simultaneous autoregressive models . Pattern Recognition
25 ( 2 ) :173 ? 188[1992]
Surface grading using soft colour-texture descriptors . In Iberoamerican Congress on Pattern Recognition ( LNCS 3773 )
pages 13 ? 23[2005]
Strong-continuation , contrast-invariant inpainting with a third-order optimal PDE
Vol . 15 , No . 7 , pp .
Speed v. accuracy for high resolutionColour textureClassification .
pages 143 ? 152[2002]
Spectral Segmentation with Multiscale Graph Decomposition
[2005]
SimultaneousCartoon and texture image inpainting using morphologicalComponent analysis ( MCA )
Vol . 19 , No . 3 , pp . 340 ? 358[2005]
Simultaneous structure and texture image inpainting
Vol . 12 , No . 8 , pp . 882 ? 886[2003]
Segmentation of defects in textile fabric
volume 1 , pages 688 ? 691[1992]
Review of Vision-Based Steel Surface Inspection Systems
[2014]
Restructured eigenfilter matching for novelty detection in random textures
pages 637 ? 646[2004]
Region-basedConvolutional networks for accurate object detection and segmentation
142-158[2015]
Region filling and object removal by exemplar-based image inpainting
Vol . 13 , No . 9 , pp . 1200 ? 1212[2004]
Real-time surface inspection by texture . Real-Time Imaging
9 ( 5 ) :289 ? 296[2003]
Real-time aspects of SOM-based visual surface inspection
pages 123 ? 134[2002]
Optimizing color and texture features for real-time visual inspection . Pattern Analysis and Applications
6 ( 3 ) :169 ? 175[2003]
Novelty detection : a review—part 2 : : neural network based approaches .
2521[2003]
Novelty detection : a review—part 1 : statistical approaches .
[2003]
Non-Parametric Texture Defect Detection Using Weibull Features , IS & T/SPIE Electronic Imaging
[2011]
Multiresolution texture classification of ceramic tiles . In S. Pandalai , editor , Recent Research Developments in Optical Engineering
pages 213 ? 228
Multiresolution gray-scale and rotation invariant texture classification with local binary patterns .
24 ( 7 ) :971 ? 987
Mean Shift : A Robust Approach Toward Feature Space Analysis
vol . 24 , no . 5 , pp . 603-619
Mathematical models for local non-texture inpaintings
Vol . 62 , No . 3 , pp . 1019 ? 1043[2002]
Learning Defect Classifiers for Visual Inspection Images by Neuro-Evolution Using Weakly Labelled Training Data . Evolutionary Computation 3925 ?
3931[2008]
Inpainting the colors
Vol . 2 , pp . 698 ? 701[2005]
Inpainting of binary images using the cahn ? hilliard equation
Vol . 16 , No . 1 , pp . 285 ? 291[2007]
Inpainting and the fundamental problem of image processing
Vol . 36 , No . 5[2003]
Image inpainting . Proceedings of the 27th annual conference on Computer graphics and interactive techniques
[2000]
Image inpainting
Vol . 35 , No . 4
Going Deeper with Convolutions
[2015]
Filter-based feature selection for rail defect detection
179-185 .[2004]
Faster r-cnn : Towards real-time object detection with region proposal networks
[2015]
Digital inpainting based on the mumford-shah-euler image model
Vol . 13 , No . 4 , pp . 353 ? 370[2002]
Detecting defects in fabric with laser-based morphological image processing .
758-762 .[2000]
Detecting and Localizing Edges Composed of Steps , Peaks and Roofs
[1990]
D. Wavelets and Their Applications for Surface Metrology
57 ( 1 ) ,[2008]
Convolutional networks for images , speech , and time series . The handbook of brain theory and neural networks 3361.10
[1995]
Color texture recognition through multiresolution features
volume 1 , pages 114 ? 121[2001]
Color texture classification by integrative Cooccurrence matrices . Pattern Recognition , 37 ( 5 ) :965 ? 976
[2004]
Color and texture based wood inspection with nonsupervised clustering
342[2001]
COF defect detection and classification system based on reference image . Journal of the Korea Institute of Information and Communication Engineering 17.8 ( 2013 ) : 1899-1907 . N. Alon , ªEigenvalues and Expanders
vol . 6 , no . 2 , pp . 83-96 ,[1986]
C ¨ omparative evaluation of texture analysis algorithms for defect inspection of textile products
pages 1738 ?
Automated Surface Inspection of Cold-Formed Micro Part . CIRP Annals ? Manufacturing Technology
61 ( 1 ) :531 ? 534[2012]
An image inpainting technique based on the fast marching method
Vol . 9 , No . 1 , pp . 25 ? 36[2004]
Active contours without edges
vol . 10 , no . 2 , pp . 266-277 ,[2001]
A threshold selection method from gray-level histograms.
9 ( 1 ) :62 ? 66[1979]
A study of registration methods for ceramic tile inspection purposes
A review of recent advances in surface defect detection using texture analysis techniques
7 ( 3 ) , 1-22[2008]
A practical image retouching method
pp . 480 ? 487[2002]
A comprehensive framework for image inpainting
Vol . 19 , No . 10 , pp . 2634 ? 2645 , 20010
A comparative study of texture measures with classification based on featured distribution