2018
DOI: 10.20944/preprints201804.0192.v1
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Automated Hertbeat Abnormality Detection Using Realtime R-Assisted Lightweight Feature Extraction Algorithm

Abstract: Abstract-Automated Electrocardiogram (ECG) processing is an important technique which helps in identifying abnormalitiesin the heart before any formal diagnosis. This research presents a real-time and lightweight R-assisted feature extraction algorithm and a heartbeat classification scheme which achieves highly accurate abnormality detection. In the proposed algorithm, we extract fifteen features from each heartbeat taken from raw Lead-II ECG signals. The features carry medically valuable information such as l… Show more

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