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A support vector machine classifier algorithm based on a perturbation method and its application to ECG beat recognition systems

机译:基于摄动法的支持向量机分类器算法及其在心电图心跳识别系统中的应用

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摘要

In this paper, we introduce a novel system for ECG beat recognition using Support Vector Machine (S VM) classifier designed by a perturbation method. Three feature extraction methods are comparatively examined in reduced dimensional feature space. The dimension of each feature set is reduced by using perturbation method. If there exist redundant data components in training data set, they can be discarded by analyzing the total disturbance of the SVM output corresponding to the perturbed inputs. Thus, the input dimension size is reduced and network becomes smaller. Algorithm for input dimension reduction is first formulated and then applied to real ECG data for recognition of beat patterns. After the preprocessing of ECG data, four types of ECG beats obtained from the MIT-BIH database are recognized with the accuracy of 96.5% by the proposed system together with discrete cosine transform.
机译:在本文中,我们介绍了一种使用扰动方法设计的支持向量机(SVM)分类器进行心电图心跳识别的新颖系统。在缩小的维特征空间中比较地研究了三种特征提取方法。通过使用摄动方法来减小每个特征集的尺寸。如果训练数据集中存在冗余数据分量,则可以通过分析与扰动输入相对应的SVM输出的总扰动来丢弃它们。因此,减小了输入尺寸的大小,并且网络变得更小。首先制定了用于减少输入维数的算法,然后将其应用于实际ECG数据以识别拍子模式。在对ECG数据进行预处理之后,所提出的系统结合离散余弦变换,可以识别出MIT-BIH数据库中的四种类型的ECG搏动,其准确率达到96.5%。

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