Automated surface texture classification of photographic print media

Author(s):  
Paul Messier ◽  
C. Richard Johnson
2014 ◽  
Vol 686 ◽  
pp. 82-85
Author(s):  
You Jiao Li ◽  
Tong Sheng Ju ◽  
Meng Gao

This thesis presents a new approach to classify 3D surface textures by using lifting transform with quincunx subsampling. Feature vectors are generated from eight different lifting prediction directions. We classify 3D surface texture images based on minimum Euclidean distance between the test images and the training sets. The feasibility and effectiveness of our proposed approach can be validated by the experimental results.


2006 ◽  
Vol 25 (4) ◽  
pp. 464-475 ◽  
Author(s):  
Ye Xu ◽  
M. Sonka ◽  
G. McLennan ◽  
Junfeng Guo ◽  
E.A. Hoffman

Author(s):  
Radu Dobrescu ◽  
Dan Popescu

Texture analysis research attempts to solve two important kinds of problems: texture segmentation and texture classification. In some applications, textured image segmentation can be solved by classification of small regions obtained from image partition. Two classes of features are proposed in the decision theoretic recognition problem for textured image classification. The first class derives from the mean co-occurrence matrices: contrast, energy, entropy, homogeneity, and variance. The second class is based on fractal dimension and is derived from a box-counting algorithm. For the purpose of increasing texture classification performance, the notions “mean co-occurrence matrix” and “effective fractal dimension” are introduced and utilized. Some applications of the texture and fractal analyses are presented: road analysis for moving objective, defect detection in textured surfaces, malignant tumour detection, remote land classification, and content based image retrieval. The results confirm the efficiency of the proposed methods and algorithms.


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