An Efficient Method Of ECG Beats Feature Extraction/Classification With Multiclass SVM Error Correcting Output Codes
Last updated: 25 Dec 2024
10.21608/mjeer.2019.62765
Legendre Polynomials, Shifted Legendre Polynomials, classification, Multiclass Support Vector Machine
Salma
El-Soudy
Computer Science & Eng. Dept., Faculty of Electronic Eng., Menoufia University.
Ayman
El-Sayed
Computer Science & Eng. Dept., Faculty of Electronic Eng., Menoufia University.
0000-0002-4437-259X
Adnan
Khalil
Department of Computer Science, University of Malakand, Pakistan
Irshad
Khalil
Department of Computer Science, University of Malakand, Pakistan.
Taha
Taha
E.
Electronic & Comm. Eng. Dept., Faculty of Electronic Eng., Menoufia University.
Fathi
Abd El-Samie
Electronic & Comm. Eng. Dept., Faculty of Electronic Eng., Menoufia University.
28
2
9507
2019-07-01
2018-08-10
2019-07-01
65
78
1687-1189
2682-3535
https://mjeer.journals.ekb.eg/article_62765.html
https://mjeer.journals.ekb.eg/service?article_code=62765
5
Original Article
1,088
Journal
Menoufia Journal of Electronic Engineering Research
https://mjeer.journals.ekb.eg/
An Efficient Method Of ECG Beats Feature Extraction/Classification With Multiclass SVM Error Correcting Output Codes
Details
Type
Article
Created At
22 Jan 2023