蔡军, 胡洋揆, 张毅, 尹春林. 多频带频域深度置信网络脑电特征识别算法[J]. 机器人, 2018, 40(4): 510-517. DOI: 10.13973/j.cnki.robot.180083
引用本文: 蔡军, 胡洋揆, 张毅, 尹春林. 多频带频域深度置信网络脑电特征识别算法[J]. 机器人, 2018, 40(4): 510-517. DOI: 10.13973/j.cnki.robot.180083
CAI Jun, HU Yangkui, ZHANG Yi, YIN Chunlin. Multi-band FDBN Algorithm for Extracting EEG Features[J]. ROBOT, 2018, 40(4): 510-517. DOI: 10.13973/j.cnki.robot.180083
Citation: CAI Jun, HU Yangkui, ZHANG Yi, YIN Chunlin. Multi-band FDBN Algorithm for Extracting EEG Features[J]. ROBOT, 2018, 40(4): 510-517. DOI: 10.13973/j.cnki.robot.180083

多频带频域深度置信网络脑电特征识别算法

Multi-band FDBN Algorithm for Extracting EEG Features

  • 摘要: 针对DBN(深度置信网络)脑电信号识别率不高的问题,提出了多频带频域深度置信网络(multi-band FDBN)算法进行特征提取.不同频带存在个体性差异,它们对于分类结果的贡献不完全相同,本文利用带通滤波器将原始的脑电信号分成多个频段,再采用FFT(快速傅里叶变换)将时域信号转换为频域信号并作归一化处理,最后将每个频段的频域数据输入DBN进行训练识别.线下实验证明,相比FDBN(频域深度置信网络)算法,多频带FDBN的平均准确率提高了3.25%,且标准差更小,鲁棒性更好.最后,在智能轮椅平台上,利用多频带FDBN算法基于左右手运动想象脑电信号控制轮椅完成了"8"字形路径,证明了该算法在脑电信号特征提取中的有效性.

     

    Abstract: In order to solve the problem of low recognition rate of electroencephalogram (EEG) signal by deep belief network (DBN), multi-band frequency domain deep belief network (multi-band FDBN) algorithm is presented for feature extraction. Due to the individual differences of different bands, their contributions to the classification results aren't exactly the same. In this paper, the band-pass filter is used to divide the original EEG signal into multiple frequency bands, and then the FFT (fast Fourier transform) is used to convert the time domain signals into frequency domain signals which are normalized. Finally, the frequency domain data of each frequency band is input into DBN for training and identification. Offline experiments show that compared with frequency domain deep belief network (FDBN), the accuracy of multi-band FDBN increases by 3.25% in average, the variance is smaller, and the robustness is better. Also, the multi-band FDBN algorithm is used to control an intelligent wheelchair platform to perform "8" trajectory with motion imaginary EEG signals of the left and right hands, which proves the effectiveness of the algorithm in EEG feature extraction.

     

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