时变生物医学信号自动检测的特征向量方法

I. Guler, E. D. Ubeyli
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引用次数: 1

摘要

本文介绍了时变生物医学信号分类的自动诊断系统,并确定了其准确率。对联合神经网络(CNN)和混合专家(ME)对研究的时变生物医学信号(眼动脉多普勒信号和脑电图信号)的分类性能进行了测试和基准测试。决策分两个阶段进行:通过特征向量方法提取特征和使用在提取的特征上训练的分类器进行分类。目的是确定问题的最佳分类方案,并推断提取的特征的线索。研究表明,特征向量方法得到的功率谱密度(PSD)估计的功率电平是表征时变生物医学信号的有价值的特征,在这些特征上训练的CNN和ME获得了较高的分类精度
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Eigenvector methods for automated detection of time-varying biomedical signals
In this paper, we present the automated diagnostic systems for time-varying biomedical signals classification and determine their accuracies. The combined neural network (CNN) and mixture of experts (ME) were tested and benchmarked for their performance on the classification of the studied time-varying biomedical signals (ophthalmic arterial Doppler signals and electroencephalogram signals). Decision making was performed in two stages: feature extraction by eigenvector methods and classification using the classifiers trained on the extracted features. The purpose was to determine an optimum classification scheme for the problem and also to infer clues about the extracted features. Our research demonstrated that the power levels of power spectral density (PSD) estimations obtained by the eigenvector methods are the valuable features which are representing the time-varying biomedical signals and the CNN and ME trained on these features achieved high classification accuracies
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