Title :
Nonlinear operators for improving texture segmentation based on features extracted by spatial filtering
Author :
Unser, Michael ; Eden, Murray
Author_Institution :
Nat. Inst. of Health, Bethesda, MD, USA
Abstract :
An unsupervised texture segmentation system using texture features obtained from a combination of spatial filters and nonlinear operators is described. Local texture features are evaluated in parallel by a succession of four basic operations: (1) a convolution for local structure detection (local linear transform); (2) a first nonlinearity of the form f(x)=|x|α; (3) an iterative smoothing operator; and (4) a second nonlinearity g(x). The Karhunen-Loeve transform is used to reduce the dimensionality of the resulting feature vector, and segmentation is achieved by thresholding or clustering in feature space. The combination of nonlinearities f(x)=|x|α (in particular, α=2) and g(x)=log x maximizes texture discrimination, and results in a description with variances approximately constant for all feature components and texture regions. This latter property improves the performance of both feature reduction and clustering algorithms significantly
Keywords :
filtering and prediction theory; iterative methods; pattern recognition; picture processing; Karhunen-Loeve transform; clustering; convolution; dimensionality; feature reduction; features extraction; iterative smoothing operator; local structure detection; nonlinear operators; spatial filtering; texture discrimination; texture segmentation; thresholding; Biomedical engineering; Biomedical measurements; Convolution; Energy measurement; Feature extraction; Filtering; Instruments; Nonlinear filters; Spatial filters; Statistics;
Journal_Title :
Systems, Man and Cybernetics, IEEE Transactions on