Chandrasekar, A.Shekar, D.D.Hiremath, A.C.Chemmangat, K.2026-02-042022Biomedical Signal Processing and Control, 2022, 73, , pp. -17468094https://doi.org/10.1016/j.bspc.2021.103469https://idr.nitk.ac.in/handle/123456789/22649The electrocardiogram is a widely used measurement for individual heart conditions, and much effort has been put into automatic arrhythmia diagnosis using machine learning. However, the classification performance is hampered by the use of less representative data in conjunction with traditional machine learning models. This paper proposes a novel algorithm for pre-processing raw Electrocardiogram signals via Gaussian Assisted Signal Smoothing. In this method, the ECG signal is modeled as a low pass component and a weighted sum of Gaussians. The Gaussians are used to model the peak characteristics of the signal, effectively preserving its structure and morphology while eliminating the noise, which is evident by the enhanced peak signal-to-noise ratio of the GASS signal. The R peaks obtained from the Pan Tompkins algorithm are used to extract the heartbeats from the filtered signal using a windowing technique. A cascaded combination of a Convolutional Neural Network and a Quadratic Support Vector Machine is then used to classify the heartbeats. The CNN model has 131,661 parameters, making it much lighter than previously reported works. The MIT-BIH Arrhythmia Database was used for our experiments. Across eleven classes, our results reveal that the model has an accuracy of 97.63% and an average F1 score of 0.9263. In contrast, previous works have primarily focused on a one vs. all or a five-class classification. From a signal processing standpoint, the proposed method offers a promising solution for Signal Filtering and Arrhythmia Classification. © 2021 Elsevier LtdBiomedical signal processingConvolutionConvolutional neural networksDiseasesElectrocardiographyGaussian distributionPattern recognitionSignal detectionSignal to noise ratioArrhythmia detectionConvolutional neural networkECG signalsElectrocardiogram signalGaussian assisted signal smoothingGaussiansNovel filteringSignal patternsSignal smoothingSupport vectors machineSupport vector machinesaccuracyalgorithmArticleartifactartificial neural networkclassification algorithmcontrolled studyconvolutional neural networkECG abnormalityelectrocardiogramelectrocardiographyelectrocardiography monitoringevoked brain stem auditory responsegaussian assisted signal smoothingheart arrhythmiaheart beathumanlearninglearning algorithmmachine learningnerve cell networkpattern recognitionperformancesignal noise ratiosignal processingsupport vector machineDetection of arrhythmia from electrocardiogram signals using a novel gaussian assisted signal smoothing and pattern recognition