Multiscale image texture analysis in wavelet spaces

The paper describes a new method for texture feature extraction and analysis in images using wavelet transform (WT), KL-expansion and Kohonen maps. For this purpose, the authors first apply a global wavelet transform on the initial image. Due to the localization properties of the WT both in the spatial and in the frequency domain it is possible to describe the local texture features in the surroundings of any pixel by a set of respective wavelet coefficients. This is accomplished by a local traversal of the wavelet pyramid and finally results in the feature vector required. Since the localization is limited by Heisenberg's uncertainty principle one must approximate the single coefficients for each pixel by piecewise linear interpolation. Once the feature vector is derived from the WT, further steps in the analysis pipeline perform decorrelation, normalization and finally clustering and supervised classification. In contrast to many related wavelet-based approaches, that usually apply different WTs on every texture sample and classify based on means derived from the former, the present method especially accounts for many real world applications. In those cases there are not usually large coherent texture regions that allow separated treatment. Moreover the approach employs a global WT and then stresses the local properties of the basis functions to identify local areas of interest from the initial image, as for instance training areas. The authors illustrate the efficiency of the method by classifying different real world textures with LVQ classifiers.<<ETX>>

[1]  R.M. Haralick,et al.  Statistical and structural approaches to texture , 1979, Proceedings of the IEEE.

[2]  Wilson S. Geisler,et al.  Multichannel Texture Analysis Using Localized Spatial Filters , 1990, IEEE Trans. Pattern Anal. Mach. Intell..

[3]  Stéphane Mallat,et al.  A Theory for Multiresolution Signal Decomposition: The Wavelet Representation , 1989, IEEE Trans. Pattern Anal. Mach. Intell..

[4]  Phil Brodatz,et al.  Textures: A Photographic Album for Artists and Designers , 1966 .

[5]  I. Daubechies Orthonormal bases of compactly supported wavelets , 1988 .

[6]  Michael Unser,et al.  Multiresolution Feature Extraction and Selection for Texture Segmentation , 1989, IEEE Trans. Pattern Anal. Mach. Intell..

[7]  M.,et al.  Statistical and Structural Approaches to Texture , 2022 .

[8]  C.-C. Jay Kuo,et al.  Texture analysis and classification with tree-structured wavelet transform , 1993, IEEE Trans. Image Process..

[9]  Jian Fan,et al.  Texture Classification by Wavelet Packet Signatures , 1993, MVA.

[10]  A. Grossmann,et al.  DECOMPOSITION OF HARDY FUNCTIONS INTO SQUARE INTEGRABLE WAVELETS OF CONSTANT SHAPE , 1984 .

[11]  B Julesz,et al.  Inability of Humans to Discriminate between Visual Textures That Agree in Second-Order Statistics—Revisited , 1973, Perception.

[12]  Ingrid Daubechies,et al.  The wavelet transform, time-frequency localization and signal analysis , 1990, IEEE Trans. Inf. Theory.

[13]  Martin Vetterli,et al.  Wavelets and filter banks: theory and design , 1992, IEEE Trans. Signal Process..