Title :
Separability-based multiscale basis selection and feature extraction for signal and image classification
Author :
Etemad, Kamran ; Chellappa, Rama
Author_Institution :
Hughes Network Syst. Inc., Germantown, MD, USA
fDate :
10/1/1998 12:00:00 AM
Abstract :
Algorithms for multiscale basis selection and feature extraction for pattern classification problems are presented. The basis selection algorithm is based on class separability measures rather than energy or entropy. At each level the “accumulated” tree-structured class separabilities obtained from the tree which includes a parent node and the one which includes its children are compared. The decomposition of the node (or subband) is performed (creating the children), if it provides larger combined separability. The suggested feature extraction algorithm focuses on dimensionality reduction of a multiscale feature space subject to maximum preservation of information useful for classification. At each level of decomposition, an optimal linear transform that preserves class separabilities and results in a reduced dimensional feature space is obtained. Classification and feature extraction is then performed at each scale and resulting “soft decisions” obtained for each area are integrated across scales. The suggested algorithms have been tested for classification and segmentation of one-dimensional (1-D) radar signals and two-dimensional (2-D) texture and document images. The same idea can be used for other tree structured local basis, e.g., local trigonometric basis functions, and even for nonorthogonal, redundant and composite basis dictionaries
Keywords :
document image processing; feature extraction; image classification; image segmentation; image texture; optimisation; radar imaging; signal representation; transforms; trees (mathematics); wavelet transforms; 1D radar signal segmentation; 2D document image; 2D texture image; accumulated tree-structured class separabilities; basis selection algorithm; children; composite basis dictionaries; dimensionality reduction; feature extraction; image classification; local trigonometric basis functions; multiscale basis selection; multiscale feature space; multiscale signal representation; node decomposition; nonorthogonal dictionary; optimal linear transform; parent node; pattern classification; redundant basis dictionary; separability-based multiscale basis selection; signal classification; soft decisions; subband decomposition; tree structured local basis; wavelet packets; Classification tree analysis; Energy measurement; Entropy; Feature extraction; Image classification; Image segmentation; Pattern classification; Radar imaging; Wavelet analysis; Wavelet packets;
Journal_Title :
Image Processing, IEEE Transactions on