Motor Imagery EEG-based Control of Intelligent Wheelchair Using Deep Belief Network Coupled with OVO-CSP Algorithm

Hongsen Zhou, GuoLong Zhang
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引用次数: 1

Abstract

Aiming at the shortcomings of low recognition rate and the cumbersome feature extraction of traditional machine learning methods during the process of controlling wheelchair with electroencephalography(EEG) signals, this paper presents a scheme for controlling intelligent wheelchair with multi-class motor imagery (MI) EEG based on deep learning framework. The representative model of deep learning deep belief network (DBN) was used to classify the MI EEG. Firstly, the improved OVO-CSP algorithm is used to extract the features of multi-class EEG. Then, five kinds of MI EEG signals are trained and classified by DBN. Finally, the comparison with traditional machine classification methods such as SVM and BP Neural Network proves the effectiveness and validity of the proposed method. The results show that the deep belief network can better extract the essential characteristics of multi-class EEG and improve the classification accuracy.
基于运动意象脑电图的深度信念网络与OVO-CSP算法的智能轮椅控制
针对传统机器学习方法在脑电图(EEG)信号控制轮椅过程中识别率低、特征提取繁琐的缺点,提出了一种基于深度学习框架的多类运动图像(MI)脑电图控制智能轮椅方案。采用深度学习深度信念网络(DBN)的代表性模型对脑电进行分类。首先,利用改进的OVO-CSP算法提取多类脑电特征;然后,用DBN对5种脑电信号进行训练和分类。最后,通过与SVM和BP神经网络等传统机器分类方法的比较,验证了所提方法的有效性。结果表明,深度信念网络能更好地提取多类脑电信号的本质特征,提高分类精度。
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