Title :
Unsupervised texture classification using vector quantization and deterministic relaxation neural network
Author :
Raghu, P.P. ; Poongodi, R. ; Yegnanarayana, B.
Author_Institution :
Centre for Syst. & Devices, Indian Inst. of Technol., Madras, India
fDate :
10/1/1997 12:00:00 AM
Abstract :
This paper describes the use of a neural network architecture for classifying textured images in an unsupervised manner using image-specific constraints. The texture features are extracted by using two-dimensional (2-D) Gabor filters arranged as a set of wavelet bases. The classification model comprises feature quantization, partition, and competition processes. The feature quantization process uses a vector quantizer to quantize the features into codevectors, where the probability of grouping the vectors is modeled as Gibbs distribution. A set of label constraints for each pixel in the image are provided by the partition and competition processes. An energy function corresponding to the a posteriori probability is derived from these processes, and a neural network is used to represent this energy function. The state of the network and the codevectors of the vector quantizer are iteratively adjusted using a deterministic relaxation procedure until a stable state is reached. The final equilibrium state of the vector quantizer gives a classification of the textured image. A cluster validity measure based on modified Hubert index is used to determine the optimal number of texture classes in the image
Keywords :
Hopfield neural nets; feature extraction; filtering theory; image classification; image coding; image texture; neural net architecture; probability; transform coding; two-dimensional digital filters; unsupervised learning; vector quantisation; wavelet transforms; 2D Gabor filters; Gibbs distribution; Hopfield model; a posteriori probability; classification model; cluster validity measure; codevectors; competition process; deterministic relaxation; deterministic relaxation neural network; energy function; equilibrium state; feature quantization; image specific constraints; label constraints; modified Hubert index; neural network architecture; partition process; pixel; textured image classification; unsupervised texture classification; vector grouping probability; vector quantization; vector quantizer; wavelet bases; Feature extraction; Gabor filters; Hopfield neural networks; Image texture analysis; Neural networks; Pixel; Remote sensing; Statistics; Two dimensional displays; Vector quantization;
Journal_Title :
Image Processing, IEEE Transactions on