A novel residual shrinkage block-based convolutional neural network for improving the recognition of motor imagery EEG signals

Jinchao Huang
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Abstract

PurposeRecently, the convolutional neural network (ConvNet) has a wide application in the classification of motor imagery EEG signals. However, the low signal-to-noise electroencephalogram (EEG) signals are collected under the interference of noises. However, the conventional ConvNet model cannot directly solve this problem. This study aims to discuss the aforementioned issues.Design/methodology/approachTo solve this problem, this paper adopted a novel residual shrinkage block (RSB) to construct the ConvNet model (RSBConvNet). During the feature extraction from EEG signals, the proposed RSBConvNet prevented the noise component in EEG signals, and improved the classification accuracy of motor imagery. In the construction of RSBConvNet, the author applied the soft thresholding strategy to prevent the non-related motor imagery features in EEG signals. The soft thresholding was inserted into the residual block (RB), and the suitable threshold for the current EEG signals distribution can be learned by minimizing the loss function. Therefore, during the feature extraction of motor imagery, the proposed RSBConvNet de-noised the EEG signals and improved the discriminative of classification features.FindingsComparative experiments and ablation studies were done on two public benchmark datasets. Compared with conventional ConvNet models, the proposed RSBConvNet model has obvious improvements in motor imagery classification accuracy and Kappa coefficient. Ablation studies have also shown the de-noised abilities of the RSBConvNet model. Moreover, different parameters and computational methods of the RSBConvNet model have been tested on the classification of motor imagery.Originality/valueBased on the experimental results, the RSBConvNet constructed in this paper has an excellent recognition accuracy of MI-BCI, which can be used for further applications for the online MI-BCI.
基于残差收缩块的卷积神经网络改进了运动图像脑电信号的识别
近年来,卷积神经网络(ConvNet)在运动图像脑电信号的分类中得到了广泛的应用。然而,低信噪比的脑电图信号是在噪声干扰下采集的。然而,传统的ConvNet模型并不能直接解决这一问题。本研究旨在探讨上述问题。设计/方法/途径为了解决这一问题,本文采用了一种新的残余收缩块(RSB)来构建卷积神经网络模型(RSBConvNet)。在对脑电信号进行特征提取时,RSBConvNet有效地抑制了脑电信号中的噪声成分,提高了运动图像的分类精度。在RSBConvNet的构建中,作者采用了软阈值策略来防止脑电信号中不相关的运动图像特征。在残差块(RB)中插入软阈值,通过最小化损失函数来学习适合当前脑电信号分布的阈值。因此,在运动图像特征提取过程中,提出的RSBConvNet对脑电信号进行去噪处理,提高了分类特征的判别能力。对比实验和消融研究在两个公共基准数据集上完成。与传统的ConvNet模型相比,RSBConvNet模型在运动图像分类精度和Kappa系数方面有明显提高。消融研究也显示了RSBConvNet模型的去噪能力。此外,还对RSBConvNet模型的不同参数和计算方法进行了运动图像分类实验。独创性/价值基于实验结果,本文构建的RSBConvNet对MI-BCI具有良好的识别精度,可用于在线MI-BCI的进一步应用。
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