Title :
Spectrum approach based classification of ECG signal
Author :
Muthuvel, K. ; Suresh, L. Padma ; Alexander, T. Jerry
Author_Institution :
Noorul Islam Univ., Kumaracoil, India
Abstract :
The heart is one of the crucial parts of a human being. The heart produces electrical signals and these cycles of electrical signals are called as cardiac cycles. The graphical recording of the cardiac cycle produced by an Electrocardiograph is called as Electro cardio gram (ECG) signal. The Electrocardiogram signal is used to diagnose the irregularity in heart beat. Automatic classification of ECG signals has applications in human-computer interaction, as well as in clinical application such as detection of key indicators of the onset of the certain illness. In this work an algorithm has been develop to detect the five abnormal beat signals includes Left bundle branch block beat (LBBB), Right bundle branch block beat (RBBB), Premature Ventricular Contraction (PVC), Atrial Premature Beat (APB) and Nodal (junction) Premature Beat (NPB) along with the normal beat. In order to prepare an appropriate input vector for the neural classifier several pre processing stages have been applied. Tri spectrum is used to extract features from the ECG signal. Preprocessing and the classification of ECG signals is done using Forward Feed Neural Network Finally, the MIT-BIH [8] database is used to evaluate the proposed algorithm.
Keywords :
electrocardiography; feature extraction; feedforward neural nets; human computer interaction; medical signal processing; signal classification; ECG; HCI; LBBB; MIT-BIH database; NPB; PVC; RBBB; abnormal beat signals; atrial premature beat; cardiac cycles; electrical signals; electrocardiogram signal; feature extraction; forward feed neural network; graphical recording; human-computer interaction; left bundle branch block beat; neural classifier; nodal premature beat; premature ventricular contraction; right bundle branch block beat; signal classification; trispectrum; Biological neural networks; Databases; Electrocardiography; Feature extraction; Feeds; Neurons; Training; Classification; Neural Network; Physic bank Database; Spectrum;
Conference_Titel :
Circuit, Power and Computing Technologies (ICCPCT), 2014 International Conference on
Print_ISBN :
978-1-4799-2395-3
DOI :
10.1109/ICCPCT.2014.7055006