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arxiv 2207.00002 v1 pith:DLPU2HDX submitted 2022-06-21 eess.IV eess.SP

A Transfer-Learning Based Ensemble Architecture for ECG Signal Classification

classification eess.IV eess.SP
keywords accuracyclassificationensemblesignalscontinuouslackmodelmodels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Manual interpretation and classification of ECG signals lack both accuracy and reliability. These continuous time-series signals are more effective when represented as an image for CNN-based classification. A continuous Wavelet transform filter is used here to get corresponding images. In achieving the best result generic CNN architectures lack sufficient accuracy and also have a higher run-time. To address this issue, we propose an ensemble method of transfer learning-based models to classify ECG signals. In our work, two modified VGG-16 models and one InceptionResNetV2 model with added feature extracting layers and ImageNet weights are working as the backbone. After ensemble, we report an increase of 6.36% accuracy than previous MLP-based algorithms. After 5-fold cross-validation with the Physionet dataset, our model reaches an accuracy of 99.98%.

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