Learning Texture Discrimination Rules in a Multiresolution System

We describe a texture analysis system in which informative discrimination rules are learned from a multiresolution representation of time textured input. The system incorporates unsupervised and supervised learning via statistical machine learning and rule-based neural networks, respectively. The textured input is represented in the frequency-orientation space via a log-Gabor pyramidal decomposition. In the unsupervised learning stage a statistical clustering scheme is used for the quantization of the feature-vector attributes. A supervised stage follows in which labeling of the textured map is achieved using a rule-based network. Simulation results for the texture classification task are given. An application of the system to real-world problems is demonstrated. >

[1]  Y. Chien,et al.  Pattern classification and scene analysis , 1974 .

[2]  Edward H. Adelson,et al.  The Laplacian Pyramid as a Compact Image Code , 1983, IEEE Trans. Commun..

[3]  J. Daugman Uncertainty relation for resolution in space, spatial frequency, and orientation optimized by two-dimensional visual cortical filters. , 1985, Journal of the Optical Society of America. A, Optics and image science.

[4]  Rama Chellappa,et al.  Classification of textures using Gaussian Markov random fields , 1985, IEEE Trans. Acoust. Speech Signal Process..

[5]  Ramakant Nevatia,et al.  Structural Analysis of Natural Textures , 1986, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[6]  D J Field,et al.  Relations between the statistics of natural images and the response properties of cortical cells. , 1987, Journal of the Optical Society of America. A, Optics and image science.

[7]  P Perona,et al.  Preattentive texture discrimination with early vision mechanisms. , 1990, Journal of the Optical Society of America. A, Optics and image science.

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

[9]  Rama Chellappa,et al.  Combined Neural Network and Rule-Based Framework for Probabilistic Pattern Recognition and Discovery , 1991, NIPS.

[10]  Padhraic Smyth,et al.  An Information Theoretic Approach to Rule Induction from Databases , 1992, IEEE Trans. Knowl. Data Eng..

[11]  Hayit Greenspan,et al.  Remote Sensing Image Analysis via a Texture Classification Neural Network , 1992, NIPS.

[12]  Padhraic Smyth,et al.  Rule-Based Neural Networks for Classification and Probability Estimation , 1992, Neural Computation.

[13]  Ajai Jain,et al.  The Handbook of Pattern Recognition and Computer Vision , 1993 .

[14]  C. H. Chen,et al.  Handbook of Pattern Recognition and Computer Vision , 1993 .

[15]  Pietro Perona,et al.  Overcomplete steerable pyramid filters and rotation invariance , 1994, 1994 Proceedings of IEEE Conference on Computer Vision and Pattern Recognition.

[16]  Pietro Perona,et al.  Rotation invariant texture recognition using a steerable pyramid , 1994, Proceedings of the 12th IAPR International Conference on Pattern Recognition, Vol. 3 - Conference C: Signal Processing (Cat. No.94CH3440-5).

[17]  H. Greenspan Multi-resolution image processing and learning for texture recognition and image enhancement , 1994 .