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首页> 外文期刊>IEE Proceedings. Part A >Time--frequency analysis of short segments of biomedical data
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Time--frequency analysis of short segments of biomedical data

机译:短时间生物医学数据的时频分析

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An evaluation is made of two novel methods in the tracking of variations in frequency of the various components present in an electroencephalogram (EEG) signal, for example when the subject is undergoing an epileptic seizure. In one method, the polynomial modelling method, the EEG is broken down into its constituent components using repeated polynomial modelling and zero crossing analysis is employed to characterise the time variation of the frequency of each component. In the second method, the phase compensation method, the signal is modelled as several cosines and the individual components are estimated and subtracted off the total signal; the phase derivative of each component is used to estimate the frequency. These methods are then compared with the conventional short time Fourier transform (STFT) and the high-order Yule---Walker (HOYW) methods. Using simulated data it is shown that the polynomial modelling method has the best performance in terms of breaking down the EEG into its constituent components. However, the HOYW and phase compensation methods provide estimates of the frequencies with lower variance. The three non-Fourier based methods are sensitive to the presence of noise and give similar estimates of the frequencies when applied to experimental non-pathological EEG data. The paper concludes with suggestions for combining the two novel methods to obtain a better frequency tracking performance.
机译:在跟踪脑电图(EEG)信号中存在的各种成分的频率变化时,例如当对象正遭受癫痫发作时,对两种新颖的方法进行了评估。在一种方法,多项式建模方法中,使用重复多项式建模将EEG分解为其组成成分,并采用零交叉分析来表征每个成分频率的时间变化。在第二种方法(相位补偿方法)中,将信号建模为几个余弦,然后估计各个分量并将其减去总信号;每个分量的相位导数用于估计频率。然后将这些方法与常规的短时傅立叶变换(STFT)和高阶Yule --- Walker(HOYW)方法进行比较。使用模拟数据表明,就将脑电图分解为其组成部分而言,多项式建模方法具有最佳性能。但是,HOYW和相位补偿方法可提供具有较低方差的频率估计。三种基于非傅立叶的方法对噪声的存在很敏感,并且在应用于实验性非病理性EEG数据时,可以得出类似的频率估计值。本文最后提出了将两种新颖的方法结合起来以获得更好的频率跟踪性能的建议。

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