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Removal of ocular artifacts from EEG using an efficient neural network based adaptive filtering technique

机译:使用基于有效神经网络的自适应滤波技术从EEG去除眼部伪影

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The electroencephalogram (EEG) is susceptible to various large signal contaminations or artifacts. Ocular artifacts act as major source of noise, making it difficult to distinguish normal brain activities from the abnormal ones. In this letter, an efficient technique that combines two popular adaptive filtering techniques, namely adaptive noise cancellation and adaptive signal enhancement, in a single recurrent neural network is proposed for the adaptive removal of ocular artifacts from EEG. A real time recurrent learning algorithm is employed for training the proposed neural network which converges faster to a lower mean squared error. This technique is suitable for real-time processing.
机译:脑电图(EEG)容易受到各种大信号污染或伪影的影响。眼神器是主要的噪声源,因此很难区分正常的大脑活动和异常的大脑活动。在这封信中,提出了在单个循环神经网络中结合两种流行的自适应滤波技术(即自适应噪声消除和自适应信号增强)的有效技术,用于从脑电图中自适应去除眼部伪影。实时递归学习算法用于训练提出的神经网络,该神经网络更快收敛到较低的均方误差。此技术适用于实时处理。

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