Detection of abnormal heart conditions based on characteristics of ECG signals

Measurement - Tập 125 - Trang 634-644 - 2018
Mohamed Hammad1,2, Asmaa Maher1, Kuanquan Wang1, Feng Jiang1, Moussa Amrani3,1
1Harbin Institute of Technology, School of Computer Science and Technology, Harbin, China
2Menoufia University, Faculty of Computers and Information, Menoufia, Egypt
3Faculty of Engineering, University of Frères Mentouri, Constantine, Algeria

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