Title of article :
http://www.ijocta.org/index.php/files/article/view/567/241
Author/Authors :
Yıldırım, Özal Department of Computer Engineering - Munzur University, Turkey , Baran Baloglu, Ulas Department of Computer Engineering - Munzur University, Turkey
Pages :
6
From page :
170
To page :
175
Abstract :
In this study, a feature vector optimization based method has been proposed for classification of the heartbeat types. Electrocardiogram (ECG) signals of five different heartbeat type were used for this aim. Firstly, wavelet transform (WT) method were applied on these ECG signals to generate all feature vectors. Optimizing these feature vectors is provided by performing particle swarm optimization (PSO), genetic search, best first, greedy stepwise and multi objective evoluationary algorithms on these vectors. These optimized feature vectors are later applied to the classifier inputs for performance evaluation. A comprehensive assessment was presented for the determination of optimized feature vectors for ECG signals and best-performing classifier for these optimized feature vectors was determined.
Keywords :
ECG signals , feature optimization , feature vectors , classification
Journal title :
International Journal of Optimization and Control: Theories and Applications
Serial Year :
2018
Full Text URL :
Record number :
2589397
Link To Document :
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