DocumentCode
1154030
Title
Feature Extraction by System Identification
Author
Eisenstein, Bruce A. ; Vaccaro, Richard J.
Volume
12
Issue
1
fYear
1982
Firstpage
42
Lastpage
50
Abstract
A method for the extraction of features for pattern recognition by system identification is presented. A test waveform is associated with a parameterized process model (PM) which is an inverse filter. The structure of the PM corresponds to the redundant information in a waveform, and the parameter values correspond to the discriminatory information. The PM used in this research is a linear predictive system whose parameters are the linear predictive coefficients (LPC´s). This technique is applied to feature extraction of electrocardiograms (ECG´s) for differential diagnosis. The LPC´s are calculated for each ECG and used as a feature vector in a hypergeometric affine N-space spanned by the LPC´s. The efficacy of this feature extraction technique is tested by three different perturbation methods, namely noise, matrix distortion, and a newly developed method called directed distortion. Both the Euclidean and Itakura distances between feature vectors in N-space are shown in increase with increasing perturbation of the template waveform. The monotonic behavior of a distance measure is a necessary attribute of a valid feature space. Thus the perturbation analyses done in this research verify the viability of using the parameters of a process model as a feature vector in a pattern recognition scheme.
Keywords
Data mining; Electrocardiography; Feature extraction; Filters; Linear predictive coding; Pattern recognition; Perturbation methods; System identification; Testing; Vectors;
fLanguage
English
Journal_Title
Systems, Man and Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
0018-9472
Type
jour
DOI
10.1109/TSMC.1982.4308774
Filename
4308774
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