典型文献
Multiband decomposition and spectral discriminative analysis for motor imagery BCI via deep neural network
文献摘要:
Human limb movement imagery,which can be used in limb neural disorders rehabilitation and brain-controlled external devices,has become a significant control paradigm in the domain of brain-computer interface(BCI).Although numerous pioneering studies have been devoted to motor imagery classification based on electroencephalography(EEG)signal,their performance is somewhat limited due to insufficient analysis of key effective frequency bands of EEG signals.In this paper,we propose a model of multiband decomposition and spectral discriminative analysis for motor imagery classification,which is called variational sample-long short term memory(VS-LSTM)network.Specifically,we first use a channel fusion operator to reduce the signal channels of the raw EEG signal.Then,we use the variational mode decomposition(VMD)model to decompose the EEG signal into six band-limited intrinsic mode functions(BIMFs)for further signal noise reduction.In order to select discriminative frequency bands,we calculate the sample entropy(SampEn)value of each frequency band and select the maximum value.Finally,to predict the classification of motor imagery,a LSTM model is used to predict the class of frequency band with the largest SampEn value.An open-access public data is used to evaluated the effectiveness of the proposed model.In the data,15 subjects performed motor imagery tasks with elbow flexion/extension,forearm supination/pronation and hand open/close of right upper limb.The experiment results show that the average classification result of seven kinds of motor imagery was 76.2%,the average accuracy of motor imagery binary classification is 96.6%(imagery vs.rest),respectively,which outperforms the state-of-the-art deep learning-based models.This framework significantly improves the accuracy of motor imagery by selecting effective frequency bands.This research is very meaningfull for BCIs,and it is inspiring for end-to-end learning research.
文献关键词:
中图分类号:
作者姓名:
Pengpai WANG;Mingliang WANG;Yueying ZHOU;Ziming XU;Daoqiang ZHANG
作者机构:
College of Computer Science and Technology,Nanjing University of Aeronautics and Astronautics,MIIT Key Laboratory of Pattern Analysis and Machine Intelligence,Nanjing 211106,China
文献出处:
引用格式:
[1]Pengpai WANG;Mingliang WANG;Yueying ZHOU;Ziming XU;Daoqiang ZHANG-.Multiband decomposition and spectral discriminative analysis for motor imagery BCI via deep neural network)[J].计算机科学前沿,2022(05):67-79
A类:
BIMFs,pronation,meaningfull
B类:
Multiband,decomposition,spectral,discriminative,analysis,motor,imagery,via,deep,neural,network,Human,limb,movement,which,used,disorders,rehabilitation,brain,controlled,external,devices,has,become,paradigm,domain,computer,interface,Although,numerous,pioneering,studies,have,been,devoted,classification,electroencephalography,EEG,their,performance,somewhat,limited,due,insufficient,key,frequency,bands,signals,In,this,paper,we,multiband,called,variational,sample,long,short,term,memory,VS,Specifically,first,fusion,operator,reduce,channels,raw,Then,VMD,decompose,into,six,intrinsic,functions,further,noise,reduction,calculate,entropy,SampEn,value,each,maximum,Finally,predict,largest,An,open,access,public,data,evaluated,effectiveness,proposed,subjects,performed,tasks,elbow,flexion,extension,forearm,supination,hand,close,right,upper,experiment,results,show,that,average,seven,kinds,was,accuracy,binary,rest,respectively,outperforms,state,art,learning,models,This,framework,significantly,improves,by,selecting,research,very,BCIs,inspiring,end
AB值:
0.501995
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