DocumentCode :
1114767
Title :
Multivariate Autoregressive Feature Extraction and the Recognition of Multichannel Waveforms
Author :
Tjostheim, Dag ; Sandvin, Ottar
Author_Institution :
Norwegian School of Economics and Business Administration, Bergen, Norway.
Issue :
1
fYear :
1979
Firstpage :
80
Lastpage :
86
Abstract :
It is proposed that the autoregressive coefficient matrices appearing in a multivariate autoregressive model fitting may be used for feature extraction purposes in problems concerning recognition of multichannel waveforms. It is demonstrated how the information contained in the autoregressive parameters may be further compressed by applying the ordinary or a modified Karhunen-Loeve expansion. The feature extraction procedures are illustrated on a large data base of seismic wave traces originating from shallow earthquakes and underground nuclear explosions. The results obtained (using a multivariate Gaussian classification algorithm) suggest that the combined autore-gressive/Karhunen-Loeve method has a considerably larger discrimination potential than the more conventional seismic discriminants.
Keywords :
Classification algorithms; Data engineering; Earthquakes; Explosions; Feature extraction; Monitoring; Pattern recognition; Power generation economics; Seismic waves; Seismology; Earthquakes; Gaussian classification; Karhunen-Loeve; multivariate autoregressive feature extraction; nuclear explosions; seismic discrimination;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.1979.4766878
Filename :
4766878
Link To Document :
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