• Title of article

    Classification of ECG Signals Using Extreme Learning Machine

  • Author/Authors

    S. Karpagachelvi، نويسنده , , M. Arthanari، نويسنده , , M.Sivakumar، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2011
  • Pages
    11
  • From page
    42
  • To page
    52
  • Abstract
    An Electrocardiogram or ECG is an electrical recording of the heart and is used in the investigation of heart disease. This ECG can be classified as normal and abnormal signals. The classification of the ECG signals is presently performed with the support vector machine. The generalization performance of the SVM classifier is not sufficient for the correct classification of ECG signals. To overcome this problem the ELM classifier is used which works by searching for the best value of the parameters that tune its discriminant function, and upstream by looking for the best subset of features that feed the classifier. The experiments were conducted on the ECG data from the Physionet arrhythmia database to classify five kinds of abnormal waveforms and normal beats. In this paper a thorough experimental study was done to show the superiority of the generalization capability of the Extreme Learning Machine (ELM) is presented and compared with support vector machine (SVM) approach in the automatic classification of ECG beats. In particular, the sensitivity of the ELM classifier is tested and that is compared with SVM combined with two classifiers, they are the k-nearest neighbor classifier (kNN) and the radial basis function neural network classifier (RBF), with respect to the curse of dimensionality and the number of available training beats. The obtained results clearly confirm the superiority of the ELM approach as compared to traditional classifiers.
  • Keywords
    Electrocardiogram (ECG) signals classification , Feature detection , Model selection issue , Feature reduction , Extreme Learning Machine (ELM) , support vector machine (SVM) , Generalization capability
  • Journal title
    Computer and Information Science
  • Serial Year
    2011
  • Journal title
    Computer and Information Science
  • Record number

    678545