Multi-class EEG classification of motor imagery signal by finding optimal time segments and features using SNR-based mutual information

被引:0
作者
Mahmoud Mahmoudi
Mousa Shamsi
机构
[1] Sahand University of Technology,Faculty of Biomedical Engineering
来源
Australasian Physical & Engineering Sciences in Medicine | 2018年 / 41卷
关键词
Brain–computer interface; Electroencephalogram; Signal to noise ratio; Mutual information; One-Vs-One scheme;
D O I
暂无
中图分类号
学科分类号
摘要
The electroencephalogram signals are used to distinguish different motor imagery tasks in brain–computer interfaces. In most studies, in order to classify the EEG signals recorded in a cue-guided BCI paradigm, time segments for feature extraction after the onset of the visual cue were selected manually. In addition, in these studies the authors have selected a single identical time segment for different subjects. The present study emphasized on the inter-individual variability and difference between different motor imagery tasks as the potential source of erroneous results and used mutual information and the subject specific time interval to overcome this problem. More specifically, a new method was proposed to automatically find the best subject specific time intervals for the classification of four-class motor imagery tasks by using MI between the BCI input and output. Moreover, the signal-to-noise ratio was used to calculate the MI values, while the MI values were used as feature selection criteria to select the discriminative features. The time segments and the best discriminative features were found by using training data and used to assess the evaluation data. Furthermore, the CSP algorithm was used to extract signal features. The dataset 2A of BCI competition IV used in this study consisted of four different motor imagery signals, which were obtained from nine different subjects. One Vs One decomposition scheme was used to deal with the multi-class nature of the problem. The MI values showed that the obtained time segments not only varied between different subjects but also varied between different classifiers of different pair of classes. Finally, the results suggested that the proposed method was efficient in classifying multi-class motor imagery signals as compared to other classification strategies proposed by the other studies.
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页码:957 / 972
页数:15
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  • [1] Teng F(2011)Square or sine: finding a waveform with high success rate of eliciting ssvep Comput Intell Neurosci 2011 2-791
  • [2] Chen Y(2002)Braincomputer interfaces for communication and control Clin Neurophys 113 767-48
  • [3] Choong AM(2013)Towards effective non-invasive brain-computer interfaces dedicated to gait rehabilitation systems Brain Sci 4 1-42
  • [4] Gustafson S(2014)Brain computer interface: principles, recent advances and clinical challenges Orient J Comput Sci Technol 7 425-1260
  • [5] Reichley C(2016)Motor imagery training for children with developmental coordination disorderstudy protocol for a randomized controlled trial BMC Neurol 16 5-777
  • [6] Lawhead P(2001)Functional brain imaging based on ERD/ERS Vis Res 41 1257-81
  • [7] Waddell D(2006)EEG classification using generative independent component analysis Neurocomputing 69 769-4687
  • [8] Wolpaw JR(2011)Automatic classification of artifactual ICA-components for artifact removal in EEG signals Behav Brain Funct 7 30-5164
  • [9] Birbaumer N(2011)An overview of independent component analysis and its applications Informatica 35 63-8666
  • [10] McFarland DJ(2015)ICA-based artifact removal diminishes scan site differences in multi-center resting-state fMRI Front Neurosci 9 395-676