ECG Signal Classification Using Various Machine Learning Techniques

被引:0
作者
S Celin
K. Vasanth
机构
[1] Satyabama Institute of Science and Technology,
[2] Vidya Jyothi Institute of Technology,undefined
来源
Journal of Medical Systems | 2018年 / 42卷
关键词
ECG signal; Butter worth filter; SVM; Adaboost; ANN; Naïve bayes;
D O I
暂无
中图分类号
学科分类号
摘要
Electrocardiogram (ECG) signal is a process that records the heart rate by using electrodes and detects small electrical changes for each heat rate. It is used to investigate some types of abnormal heart function including arrhythmias and conduction disturbance. In this paper the proposed method is used to classify the ECG signal by using classification technique. First the Input signal is preprocessed by using filtering method such as low pass, high pass and butter worth filter to remove the high frequency noise. Butter worth filter is to remove the excess noise in the signal. After preprocessing peak points are detected by using peak detection algorithm and extract the features for the signal are extracted using statistical parameters. Finally, extracted features are classified by using SVM, Adaboost, ANN and Naïve Bayes classifier to classify the ECG signal database into normal or abnormal ECG signal. Experimental result shows that the accuracy of the SVM, Adaboost, ANN and Naïve Bayes classifier is 87.5%, 93%, 94 and 99.7%. Compared to other classifier naïve bayes classifier accuracy is high.
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