会议专题

Multi-class Motor Imagery Classification by Singular Value Decomposition and Deep Boltzmann Machine

  Motor function rehabilitation is very urgent for patients.Motor imagery is an efficient way for rehabilitation.To achieve the supervision of multiple rehabilitation targets simultaneously,the promotion of multi-class motor imagery classification accuracy is critical.In this paper,a multi-class classification method is proposed by utilizing singular value decomposition and deep boltzmann machine.Singular value decomposition is applied to suppress the artifacts and acquire the channel-individual characteristics.The deep boltzmann machine is employed to extract and model the characteristics and achieve the motor imagery classification.Results demonstrate that the proposed method has achieved a 14.2%higher classification accuracy than the common spatial pattern on average.This results are further validated by the statistical methods,which present a significant difference(p < 0.05).The proposed method is favorable for promoting the multi-class motor imagery classification efficiency.

Brain computer interface Motor imagery Deep boltzmann machine Multi-class Classification

Zhongliang Yu Jinchun Song

School of Mechanical Engineering and Automation Northeastern University Shenyang,China

国际会议

2017 IEEE 3rd Information Technology and Mechatronics Engineering Conference(ITOEC2017)(2017 IEEE 第3届信息技术与机电一体化工程国际学术会议)

重庆

英文

376-379

2017-10-03(万方平台首次上网日期,不代表论文的发表时间)