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Nonlinear Considerations in EEG Signal Classification

机译:脑电图信号分类中的非线性考虑因素

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摘要

In this paper, we investigate the effect of incorporating modeling of nonlinearity on the classification of electroeacephalogram (EEG) signals using an artificial neural network (ANN). It is observed that the ANN's predictive ability is improved after preprocessing EEG signals using a particular nonlinear modeling technique, viz. a bilinear model, compared with those obtained by using a particular classical linear analysis method, viz. an autoregressive (AR) model. Until recently, linear time-invariant Gaussian modeling has dominated the develop-merit of time series modeling and feature extraction. The advantage of such classical models lies in the fact that a complete signal processing theory is available. In the case of EEG signals, where the underlying theory regarding the dynamical law governing the generation of these signals (e.g., the underlying physiological factors) is not completely understood, a case can be made for using improved signal processing models that are not subject to linear constraints. Such models should recognize important features of the observed data that may not be well modeled by a linear time-invariant model. It is known that EEG signals are nonstationary, and it is possible that they may be nonlinear as well. Thus, one way of gaining further insights on the structure of EEG signals is to introduce nonlinear models and higher order spectra. This paper compares the results of classification using a linear AR model with those obtained from a bilinear model. It is shown that in certain cases, the nonlinearity of EEG signals is an important factor that ought to be taken into consideration during preprocessing of the signals prior to the classification task.
机译:在本文中,我们研究了使用人工神经网络 (ANN) 结合非线性建模对电切图 (EEG) 信号分类的影响。据观察,与使用特定的经典线性分析方法(即自回归 (AR) 模型)获得的信号相比,使用特定的非线性建模技术(即双线性模型)对 EEG 信号进行预处理后,ANN 的预测能力得到了提高。直到最近,线性时不变高斯建模一直主导着时间序列建模和特征提取的发展优势。这种经典模型的优点在于可以获得完整的信号处理理论。在脑电图信号的情况下,如果关于控制这些信号产生的动力学定律(例如,潜在的生理因素)的基本理论尚未完全理解,则可以使用不受线性约束的改进信号处理模型。此类模型应识别观测数据的重要特征,这些特征可能无法通过线性时不变模型很好地建模。众所周知,脑电图信号是非平稳的,它们也可能是非线性的。因此,进一步了解脑电图信号结构的一种方法是引入非线性模型和高阶光谱。本文比较了使用线性AR模型的分类结果与双线性模型的分类结果。结果表明,在某些情况下,脑电信号的非线性是分类任务之前在信号预处理过程中应考虑的重要因素。

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