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A Decoding Scheme for Incomplete Motor Imagery EEG With Deep Belief Network

机译:深度信念网络的不完整运动图像脑电信号解码方案

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摘要

High accuracy decoding of electroencephalogram (EEG) signal is still a major challenge that can hardly be solved in the design of an effective motor imagery-based brain-computer interface (BCI), especially when the signal contains various extreme artifacts and outliers arose from data loss. The conventional process to avoid such cases is to directly reject the entire severely contaminated EEG segments, which leads to a drawback that the BCI has no decoding results during that certain period. In this study, a novel decoding scheme based on the combination of Lomb-Scargle periodogram (LSP) and deep belief network (DBN) was proposed to recognize the incomplete motor imagery EEG. Particularly, instead of discarding the entire segment, two forms of data removal were adopted to eliminate the EEG portions with extreme artifacts and data loss. The LSP was utilized to steadily extract the power spectral density (PSD) features from the incomplete EEG constructed by the remaining portions. A DBN structure based on the restricted Boltzmann machine (RBM) was exploited and optimized to perform the classification task. Various comparative experiments were conducted and evaluated on simulated signal and real incomplete motor imagery EEG, including the comparison of three PSD extraction methods (fast Fourier transform, Welch and LSP) and two classifiers (DBN and support vector machine, SVM). The results demonstrate that the LSP can estimate relative robust PSD features and the proposed scheme can significantly improve the decoding performance for the incomplete motor imagery EEG. This scheme can provide an alternative decoding solution for the motor imagery EEG contaminated by extreme artifacts and data loss. It can be beneficial to promote the stability, smoothness and maintain consecutive outputs without interruption for a BCI system that is suitable for the online and long-term application.
机译:脑电图(EEG)信号的高精度解码仍然是主要挑战,在基于运动图像的有效脑机接口(BCI)的设计中很难解决,尤其是当信号包含各种极端伪像且数据产生异常值时失利。避免这种情况的常规过程是直接拒绝整个严重污染的EEG段,这导致BCI在该特定时间段内没有解码结果的缺点。在这项研究中,提出了一种新的基于Lomb-Scargle周期图(LSP)和深度置信网络(DBN)组合的解码方案,以识别不完整的运动图像脑电图。特别是,不是丢弃整个段,而是采用两种形式的数据删除来消除带有极端伪影和数据丢失的EEG部分。 LSP用于从剩余部分构成的不完整EEG中稳定提取功率谱密度(PSD)特征。利用并优化了基于受限玻尔兹曼机(RBM)的DBN结构来执行分类任务。对模拟信号和真实的不完整运动图像EEG进行了各种比较实验,并进行了评估,包括比较了三种PSD提取方法(快速傅里叶变换,Welch和LSP)和两个分类器(DBN和支持向量机,SVM)。结果表明,LSP可以估计相对鲁棒的PSD特征,并且所提出的方案可以显着提高针对不完整的运动图像EEG的解码性能。该方案可以为被极端伪影和数据丢失污染的电机图像EEG提供替代解码解决方案。对于适用于在线和长期应用的BCI系统,提高稳定性,平滑度并保持连续输出而不中断是有益的。

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