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ECoG-based brain-computer interface using relative wavelet energy and probabilistic neural network

机译:相对小波能量和概率神经网络的基于ECoG的脑机接口

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In this study, a brain-computer interface (BCI) using electrocorticograms (ECoG) is proposed. Feature extraction is an important task that significantly affects the classification results. First, the discrete wavelet transform was applied to ECoG signals from one subject performing imagined movements of either the left small-finger or the tongue. After preprocessing, relative wavelet energy of selected 8 channels were extracted and built 40 dimension feature vector. Then the dimension of feature vector was reduced using principal component analysis (PCA). Finally, probabilistic neural network (PNN) was used to classify. The average classification accuracy rate reached a maximum of 91.8% when spread of radial basis functions was 0.11. The offline analysis results showed that ECoG signals could be used in BCI design, and gave new ideas and methods for feature extraction and classification of imaginary movements in ECoG-based BCI research.
机译:在这项研究中,提出了使用脑电图(ECoG)的脑机接口(BCI)。特征提取是一项重要任务,会显着影响分类结果。首先,将离散小波变换应用于来自一个对象的ECoG信号,该对象执行左小指或舌头的想象动作。经过预处理,提取了所选8个通道的相对小波能量,并建立了40维特征向量。然后使用主成分分析(PCA)减少特征向量的维数。最后,使用概率神经网络(PNN)进行分类。当径向基函数的展宽为0.11时,平均分类准确率最高达到91.8%。离线分析结果表明,ECoG信号可用于BCI设计,并为基于ECoG的BCI研究提供了新的思想和方法,用于特征提取和虚部运动的分类。

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