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首页> 外文期刊>Journal of neural engineering >System based on subject-specific bands to recognize pedaling motor imagery: towards a BCI for lower-limb rehabilitation
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System based on subject-specific bands to recognize pedaling motor imagery: towards a BCI for lower-limb rehabilitation

机译:基于特定学科带的系统来识别踏板运动图像:朝BCI进行下肢康复

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Objective. The aim of this study is to propose a recognition system of pedaling motor imagery for lower-limb rehabilitation, which uses unsupervised methods to improve the feature extraction, and consequently the class discrimination of EEG patterns. Approach. After applying a spectrogram based on short-time Fourier transform (SSTFT), both sparseness constraints and total power are used on the time-frequency representation to automatically locate the subject-specific bands that pack the highest power during pedaling motor imagery. The output frequency bands are employed in the recognition system to automatically adjust the cut-off frequency of a low-pass filter (Butterworth, 2nd order). Riemannian geometry is also used to extract spatial features, which are further analyzed through a fast version of neighborhood component analysis to increase the class separability. Main results. For ten healthy subjects, our recognition system based on subject-specific bands achieved mean accuracy of 96.43% +/- 1.56% and mean Kappa of 92.85% +/- 3.12%. Significance. Our approach can be used to obtain a low-cost robotic rehabilitation system based on motorized pedal, as pedaling exercises have shown great potential for improving the muscular performance of post-stroke survivors.
机译:目的。这项研究的目的是提出一种用于下肢康复的踏板运动图像识别系统,该系统使用无监督方法来改进特征提取,从而改善脑电图模式的分类。方法。在应用基于短时傅立叶变换(SSTFT)的频谱图后,稀疏约束和总功率都将用于时频表示,以自动定位在踩踏电机图像过程中具有最高功率的特定于受试者的频段。输出频带用于识别系统,以自动调整低通滤波器的截止频率(Butterworth,2阶)。黎曼几何还用于提取空间特征,并通过邻域分量分析的快速版本进一步分析该特征,以提高类的可分离性。主要结果。对于十名健康受试者,我们基于受试者特定频段的识别系统实现了96.43%+/- 1.56%的平均准确度和92.85%+/- 3.12%的平均Kappa。意义。我们的方法可用于获得基于电动踏板的低成本机器人康复系统,因为踩踏运动已显示出极大的潜力,可改善中风后幸存者的肌肉表现。

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