Abstract

Feature extraction is an important part of data processing that provides a basis for more complicated tasks such as classification or clustering. Recently many approaches for signal feature extraction were created. However, plenty of proposed methods are based on convolutional neural networks. This class of models requires a high amount of computational power to train and deploy and large dataset. Our work introduces a novel feature extraction method that uses wavelet transform to provide additional information in the Independent Component Analysis mixing matrix. The goal of our work is to combine good performance with a low inference cost. We used the task of Electrocardiography (ECG) heartbeat classification to evaluate the usefulness of the proposed approach. Experiments were carried out with an MIT-BIH database with four target classes (Normal, Vestibular ectopic beats, Ventricular ectopic beats, and Fusion strikes). Several base wavelet functions with different classifiers were used in experiments. Best was selected with 5-fold cross-validation and Wilcoxon test with significance level 0.05. With the proposed method for feature extraction and multi-layer perceptron classifier, we obtained 95.81% BAC-score. Compared to other literature methods, our approach was better than most feature extraction methods except for convolutional neural networks. Further analysis indicates that our method performance is close to convolutional neural networks for classes with a limited number of learning examples. We also analyze the number of required operations at test time and argue that our method enables easy deployment in environments with limited computing power.

Highlights

  • Signal processing is a rapidly developing field

  • We examine the possibility of combining the independent component analysis with the wavelet transform by modifying the Independent component analysis (ICA) mixing matrix

  • The highest metrics values for this kind of network were obtained for each type of wavelet and ICA

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Summary

Introduction

Signal processing is a rapidly developing field. With an abundance of new data and the development of user electronics, demand for methods that can quickly analyze incoming data increases. Both cloud and edge computing approaches can address these problems. The speed and accuracy of algorithms are crucial in cloud and edge solutions. For this reason, we introduce a novel method for signal feature extraction that obtains performance slightly below best-.

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