DocumentCode
2766244
Title
Learning feature characteristics
Author
Hickinbotham, Simon J. ; Hancock, Edwin R. ; Austin, James
Author_Institution
Dept. of Comput. Sci., York Univ., UK
Volume
2
fYear
1998
fDate
16-20 Aug 1998
Firstpage
1160
Abstract
This paper describes a statistical framework for the unsupervised learning of linear filter combinations for feature characterisation. The learning strategy is two step. In the first instance, the EM algorithm is used to learn the foreground probability distribution. This is an abductive process, since we have a detailed model of the background process based on the known noise-response characteristics of the filter-bank. The second phase uses the a posteriori foreground and background probabilities to compute a weighted between-class covariance matrix. We use the principal components analysis to locate the linear filter combinations that maximise the between class covariance matrix. The new feature characterisation method is illustrated for the problem of extracting linear features from complex millimetre radar images. The method proves to be effective in learning a mixture of sine and cosine phase Gabor functions necessary to capture shadowed line structures
Keywords
covariance matrices; feature extraction; principal component analysis; probability; radar imaging; radial basis function networks; unsupervised learning; EM algorithm; Gabor functions; covariance matrix; feature characteristics learning; linear filter; principal components analysis; probability distribution; radar images; statistical analysis; unsupervised learning; Background noise; Computer science; Covariance matrix; Feature extraction; Gaussian processes; Object recognition; Polynomials; Principal component analysis; Probability distribution; Radar imaging;
fLanguage
English
Publisher
ieee
Conference_Titel
Pattern Recognition, 1998. Proceedings. Fourteenth International Conference on
Conference_Location
Brisbane, Qld.
ISSN
1051-4651
Print_ISBN
0-8186-8512-3
Type
conf
DOI
10.1109/ICPR.1998.711902
Filename
711902
Link To Document