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http://dx.doi.org/10.30693/SMJ.2018.7.4.90

A Multilinear LDA Method of Tensor Representation for ECG Signal Based Individual Identification  

Lim, Won-Cheol (조선대학교 소프트웨어융합공학과)
Kwak, Keun-Chang (조선대학교 전자공학부)
Publication Information
Smart Media Journal / v.7, no.4, 2018 , pp. 90-98 More about this Journal
Abstract
A Multilinear LDA Method of Tensor Representation for ECG Signal Based Individual Identification Electrocardiogram signals, included in the cardiac electrical activity, are often analyzed and used for various purposes such as heart rate measurement, heartbeat rhythm test, heart abnormality diagnosis, emotion recognition and biometrics. The objective of this paper is to perform individual identification operation based on Multilinear Linear Discriminant Analysis (MLDA) with the tensor feature. The MLDA can solve dimensional aspects of classification problems in high-dimensional tensor, and correlated subspaces can be used to distinguish between different classes. In order to evaluate the performance, we used MPhysionet's MIT-BIH database. The experimental results on this database showed that the individual identification by MLDA outperformed that by PCA and LDA.
Keywords
multilinear discriminant analysis; tensor representation; MIT-BIH database; electrocardiogram; biometrics;
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Times Cited By KSCI : 2  (Citation Analysis)
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