基于蜻蜓Levenberg marquardt学习算法的脑电图信号伪影去除

Quazi M. H Swami
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引用次数: 9

摘要

脑电图(EEG)是对大脑电活动的记录。从大脑区域记录下来的波形显示了皮层的活动。脑电信号与其他生物信号的融合被称为伪影。一些伪影是眼电图(EOG),心电图(ECG)和肌电图(EMG)。从脑电图信号中去除伪影在医学上是一个非常具有挑战性的问题。提出了一种基于蜻蜓Levenberg Marquardt (DrLM)优化的神经网络(NN)来去除脑电信号中的伪影。首先,对脑电信号进行基于蜻蜓算法和LM的自适应滤波,确定最优权值。将这两种方法进行杂交,并交给神经网络进行权值识别。最后,去除脑电信号中的伪影。DrLM-NN的性能通过信噪比、MSE和RMSE来评估。该伪迹去除方法最大信噪比为45.67,最小MSE为2982,最小RMSE为1.11,表明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artifacts Removal using Dragonfly Levenberg Marquardt-Based Learning Algorithm from Electroencephalogram Signal
: Electroencephalogram (EEG) is the recording of the electrical activity of the brain. The waveforms that are recorded from the brain regions show the cortical activity. The integration of EEG signals with other bio-signals is known as artifacts. Some of the artifacts are Electrooculogram (EOG), Electrocardiogram (ECG), and Electromyogram (EMG). The artifacts removed from the EEG signal are very challenging in medical. This paper presents the Dragonfly Levenberg Marquardt (DrLM) optimization-based Neural Network (NN) to remove the artifacts from EEG. Initially, the EEG signal is subjected to adaptive filter for determining the optimal weights based on Dragonfly Algorithm (DA) and LM. These two approaches are hybridized and given to the NN to identify the weights. At last, the artifacts are removed from the EEG signal. The performance of DrLM-NN is evaluated in terms of SNR, MSE, and RMSE. The proposed artifact removal method achieves the maximum SNR of 45.67, minimal MSE of 2982, and minimal RMSE of 1.11 that indicates its superiority.
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