基于径向基函数网络的睡眠阶段分类算法

Zhihong Cui, Xiangwei Zheng
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引用次数: 2

摘要

在对睡眠信号进行时频域自回归模型功率谱分析的基础上,发现每个睡眠阶段在每个频段都有自己独特的功率谱。睡眠相位的变化伴随着睡眠信号频谱的变化。本文首先研究了用于自动睡眠分期的原始RBF神经网络,然后提出了一种改进的分类算法,该算法将每个睡眠阶段的功率谱称为频域特征,并计算另外五个时域特征作为输入参数。在ISRUC-Sleep数据集上对该分类算法进行了测试。实验结果表明,基于改进的径向基函数网络的分类算法在准确率和效率上都是有效的。
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A sleep stage classification algorithm based on radial basis function networks
Based on the auto-regressive model power spectrum analysis of sleep signal in time-frequency domain, it is found that each sleep stage has its own unique power spectrum in each frequency band. The change of sleep phase is accompanied with the change of sleep signal spectrum. In this paper, we firstly study the original RBF neural network for automatic sleep staging and then propose an improved classification algorithm in which the power spectrum of each sleep stage known as frequency domain features and five another time domain features are calculated as input parameters. The proposed classification algorithm is tested on ISRUC-Sleep data set. Experimental results demonstrate that classification algorithm based on the improved radial basis function network is effective in accuracy and efficiency.
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