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首页> 外文期刊>Sensors >EEG-Based Brain-Computer Interface for Decoding Motor Imagery Tasks within the Same Hand Using Choi-Williams Time-Frequency Distribution
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EEG-Based Brain-Computer Interface for Decoding Motor Imagery Tasks within the Same Hand Using Choi-Williams Time-Frequency Distribution

机译:基于脑电图的脑计算机接口,用于使用Choi-Williams时频分布在同一只手内解码运动图像任务

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This paper presents an EEG-based brain-computer interface system for classifying eleven motor imagery (MI) tasks within the same hand. The proposed system utilizes the Choi-Williams time-frequency distribution (CWD) to construct a time-frequency representation (TFR) of the EEG signals. The constructed TFR is used to extract five categories of time-frequency features (TFFs). The TFFs are processed using a hierarchical classification model to identify the MI task encapsulated within the EEG signals. To evaluate the performance of the proposed approach, EEG data were recorded for eighteen intact subjects and four amputated subjects while imagining to perform each of the eleven hand MI tasks. Two performance evaluation analyses, namely channel- and TFF-based analyses, are conducted to identify the best subset of EEG channels and the TFFs category, respectively, that enable the highest classification accuracy between the MI tasks. In each evaluation analysis, the hierarchical classification model is trained using two training procedures, namely subject-dependent and subject-independent procedures. These two training procedures quantify the capability of the proposed approach to capture both intra- and inter-personal variations in the EEG signals for different MI tasks within the same hand. The results demonstrate the efficacy of the approach for classifying the MI tasks within the same hand. In particular, the classification accuracies obtained for the intact and amputated subjects are as high as 88 . 8 % and 90 . 2 % , respectively, for the subject-dependent training procedure, and 80 . 8 % and 87 . 8 % , respectively, for the subject-independent training procedure. These results suggest the feasibility of applying the proposed approach to control dexterous prosthetic hands, which can be of great benefit for individuals suffering from hand amputations.
机译:本文提出了一种基于脑电图的脑机接口系统,用于在同一只手内对11个运动图像(MI)任务进行分类。提出的系统利用Choi-Williams时频分布(CWD)来构建EEG信号的时频表示(TFR)。构造的TFR用于提取五类时频特征(TFF)。使用分层分类模型处理TFF,以识别封装在EEG信号内的MI任务。为了评估所提出方法的性能,记录了18名完整受试者和4名截肢受试者的EEG数据,同时设想执行11项手部MI任务。进行了两种性能评估分析,即基于通道和基于TFF的分析,以分别识别EEG通道和TFF类别的最佳子集,从而使MI任务之间的分类精度最高。在每个评估分析中,都使用两种训练过程来训练分层分类模型,即依赖于主题的过程和依赖于主题的过程。这两种训练过程量化了所提出方法在同一只手中针对不同MI任务捕获EEG信号中人际和人际变化的能力。结果证明了该方法在同一手中对MI任务进行分类的功效。特别是,对完整和截肢的受试者获得的分类精度高达88。 8%和90。 2%分别用于与主题相关的训练过程,80。 8%和87。独立于受试者的培训程序分别为8%。这些结果表明,将所提出的方法用于控制灵巧的假手的可行性,这对于患有截肢的个体可能具有很大的益处。

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