Fig. 1 System configuration
Fig. 2 Variability of QRS morphology by each arrhythmia
Fig. 3 Variability of RR interval by each arrhythmia
Fig. 4 Accuracy through QRS egment(n1=24), AR order (p1 : 2 ~ 9)
Fig. 5 Accuracy through RR segment(n2=600), AR order(p2 : 2 - 9)
Fig. 6 R peak detection & SVM classification result
Table. 1 Comparison of classification rates by parameters
Table. 2 Arrhythmia classification rate
Table. 3 Performance comparison between the proposed algorithm and state of the art papers
참고문헌
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