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Noise removal in electroencephalogram signals using an artificial neural network based on the simultaneous perturbation method

机译:基于同时扰动方法的人工神经网络去除脑电图信号中的噪声

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Electroencephalogram (EEG) recordings often experience interference by different kinds of noise, including white, muscle and baseline, severely limiting its utility. Artificial neural networks (ANNs) are effective and powerful tools for removing interference from EEGs. Several methods have been developed, but ANNs appear to be the most effective for reducing muscle and baseline contamination, especially when the contamination is greater in amplitude than the brain signal. An ANN as a filter for EEG recordings is proposed in this paper, developing a novel framework for investigating and comparing the relative performance of an ANN incorporating real EEG recordings. This method is based on a growing ANN that optimized the number of nodes in the hidden layer and the coefficient matrices, which are optimized by the simultaneous perturbation method. The ANN improves the results obtained with the conventional EEG filtering techniques: wavelet, singular value decomposition, principal component analysis, adaptive filtering and independent components analysis. The system has been evaluated within a wide range of EEG signals. The present study introduces a new method of reducing all EEG interference signals in one step with low EEG distortion and high noise reduction.
机译:脑电图(EEG)记录经常会受到包括白,肌肉和基线在内的各种噪声的干扰,从而严重限制了其效用。人工神经网络(ANN)是消除脑电图干扰的有效且强大的工具。已经开发了几种方法,但是人工神经网络似乎是减少肌肉和基线污染最有效的方法,尤其是当污染的幅度大于脑信号时。本文提出了一种神经网络作为脑电图记录的过滤器,为研究和比较结合实际脑电图记录的神经网络的相对性能开发了一个新颖的框架。该方法基于不断增长的人工神经网络,该神经网络优化了隐层中的节点数和系数矩阵,并通过同时扰动方法对其进行了优化。人工神经网络改进了通过常规EEG滤波技术获得的结果:小波,奇异值分解,主成分分析,自适应滤波和独立成分分析。该系统已在广泛的EEG信号范围内进行了评估。本研究介绍了一种以低EEG失真和高降噪效果一步一步减少所有EEG干扰信号的新方法。

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