基于机器学习技术的最小-最大阈值分析在心电信号x波分类中的可行性探讨

S. Velusamy, Pallikonda Rajasekaran Murugan, Kottaimalai Ramaraj, Arunprasath Thiyagarajan, V. Govindaraj, Vidyavathi Kamalakkannan
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引用次数: 0

摘要

一种叫做心电图(ECG)的非平稳信号被用来评估一个人心跳的节奏和速度。特征提取是心电图分类的主要阶段,因为它负责识别一组相关的特征,以达到最大的准确性。在一切都说了和做了之后,本研究提供了目前用于检测心电波形的方法的全面概述。本研究对现有的心电分类方法和心电波形检测方法进行了比较和对比,突出了各自的优缺点。本研究的主要目标是提供一种自动心电波识别与分类方法。从结果可以看出,精度还有待提高。采用最小-最大阈值分析方法可以识别心电x波。然后利用卷积神经网络(CNN)对其进行分类。预计这一评价将被证明是研究人员、科学工程师和其他从事这一领域的人员确定有关来源的有效工具。
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Exploring the Feasibilities of Applying Min-Max Threshold Analysis with Machine Learning Techniques for Categorization of X-Wave in ECG Signal
A non-stationary signal called an electrocardiogram (ECG) is used to assess the rhythm and tempo of a person's heartbeat. Feature extraction is the primary phase in ECG classification, since it is responsible for identifying a group of pertinent characteristics that can achieve the greatest accuracy. After everything is said and done, this study provides a comprehensive overview of the methods currently used for detecting ECG waveforms. This study compares and contrast the current methods for ECG classification and ECG waveform detection and highlight their respective strength and weakness. The major goal of this study is to offer an automated ECG wave identification and classification method. From the outcomes, it can be decided as the accuracy is need to be enhanced/improved. The X-wave of ECG could be recognized using Min Max threshold analysis method. Then it is subjected to classification by means of Convolutional Neural Network (CNN). It is anticipated that this evaluation will prove to be an efficient tool for researchers, scientific engineers, and others engaged in this field to identify pertinent sources.
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