1 July 1997 Wavelet-based feature-adaptive adaptive resonance theory neural network for texture identification
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Abstract
A new method of texture classification comprising two processing stages, namely a low-level evolutionary feature extraction based on Gabor wavelets and a high-level neural network based pattern recognition, is proposed. The design of these stages is motivated by the processes involved in the human visual system: low-level receptors responsible for early vision processing and the high-level cognition. Gabor wavelets are used as extractors of "lowlevel" features that feed the feature-adaptive adaptive resonance theory (ART) neural network acting as a high-level "cognitive system." The novelty of the model developed in this paper lies in the use of a self-organizing input layer to the fuzzy ART. Evaluation of the model is performed by using natural textures, and results obtained show that the developed model is capable of performing the texture recognition task effectively. Applications of the developed model include the study of artificial vision systems motivated by the human visual system model.
Jian Wang, Golshah A. Naghdy, and Philip O. Ogunbona "Wavelet-based feature-adaptive adaptive resonance theory neural network for texture identification," Journal of Electronic Imaging 6(3), (1 July 1997). https://doi.org/10.1117/12.269902
Published: 1 July 1997
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CITATIONS
Cited by 5 scholarly publications and 1 patent.
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KEYWORDS
Neural networks

Fuzzy logic

Wavelets

Visual system

Image classification

Visual process modeling

Classification systems

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