文件名称:QRS Feature Extraction Using Linear Prediction
文件大小:481KB
文件格式:PDF
更新时间:2022-03-03 18:25:30
ECG 心电图 Linear Predi 生物工程
This communication proposes a method called linear prediction (a high performant technique in digital speech processing) for analyzing digital ECG signals. There ape several significant properties indicating that ECG signals have an important feature in the residual error signal obtained after processing by Durhin’s linear prediction algorithm. This communication also indicates that the prediction order need not he more than two for fast arrhythmia detection. The ECG signal classification puts an emphasis on the residual error signal. For each ECG’s QRS complex, the feature for recognition is obtained from a nonlinear transformation which transforms every residual error signal to a set of three states pulse-code train relative to the original ECG signal. The pulse-code train has the advantage of easy implementation in digital hardware circuits to achieve automated ECG diagnosis. The algorithm performs very well in feature extraction in arrhythmia detection. Using this method, our studies indicat that the PVC (premature ventricular contraction) detection has at least a 92 percent sensitivity for MIT/BIH arrhythmia database.