EEG feature comparison and classification of simple and compound limb motor imagery

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Abstract

Background: Motor imagery can elicit brain oscillations in Rolandic mu rhythm and central beta rhythm, both originating in the sensorimotor cortex. In contrast with simple limb motor imagery, less work was reported about compound limb motor imagery which involves several parts of limbs. The goal of this study was to investigate the differences of the EEG patterns between simple limb motor imagery and compound limb motor imagery, and discuss the separability of multiple types of mental tasks. Methods. Ten subjects participated in the experiment involving three tasks of simple limb motor imagery (left hand, right hand, feet), three tasks of compound limb motor imagery (both hands, left hand combined with right foot, right hand combined with left foot) and rest state. Event-related spectral perturbation (ERSP), power spectral entropy (PSE) and spatial distribution coefficient were adopted to analyze these seven EEG patterns. Then three algorithms of modified multi-class common spatial patterns (CSP) were used for feature extraction and classification was implemented by support vector machine (SVM). Results: The induced event-related desynchronization (ERD) affects more components within both alpha and beta bands resulting in more broad ERD bands at electrode positions C3, Cz and C4 during left/right hand combined with contralateral foot imagery, whose PSE values are significant higher than that of simple limb motor imagery. From the topographical distribution, simultaneous imagination of upper limb and contralateral lower limb certainly contributes to the activation of more areas on cerebral cortex. Classification result shows that multi-class stationary Tikhonov regularized CSP (Multi-sTRCSP) outperforms other two multi-class CSP methods, with the highest accuracy of 84% and mean accuracy of 70%. Conclusions: The work implies that there exist the separable differences between simple limb motor imagery and compound limb motor imagery, which can be utilized to build a multimodal classification paradigm in motor imagery based brain-computer interface (BCI) systems. © 2013 Yi et al.; licensee BioMed Central Ltd.

Figures

  • Figure 1 Experimental paradigm and electrode positions. (a) Experime
  • Figure 2 Examples of time-frequency maps for one subject, 7 mental tasks, and 3 electrode locations. LH, RH, F, BH, LH&RF, RH&LF and R indicate left hand, right hand, feet, both hands, left hand combined with right foot, right hand combined with left foot and rest respectively. Blue indicates ERD.
  • Figure 3 The comparison of power changes in six groups for electrod while red line indicates simple limb motor imagery. The grey blocks presen imagery and compound limb motor imagery.
  • Figure 4 The comparison of power changes in six groups for electrode position Cz. Blue line indicates compound limb motor imagery, while red line indicates simple limb motor imagery. The grey blocks present statistic significant differences (p < 0.05) between simple limb motor imagery and compound limb motor imagery.
  • Figure 5 The comparison of power changes in six groups for electrod while red line indicates simple limb motor imagery. The grey blocks presen imagery and compound limb motor imagery.
  • Figure 6 The topographical distribution for 7 mental tasks from one subject. The maps are made based on ERSP values of each electrode. Blue regions indicate the involved areas when ERD occurs during mental tasks.
  • Figure 7 The comparison of PSE values in six groups for C3, Cz and C indicates simple limb motor imagery. Condition pairs that significantly diffe asterisks (p < 0.01).
  • Figure 8 The comparison of spatial distribution coefficient among six groups. Blue bar indicates compound limb motor imagery, while red bar indicates simple limb motor imagery. Condition pairs that significantly differ from each other are indicated by an asterisk (p < 0.05) or two asterisks (p < 0.01).

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CITATION STYLE

APA

Yi, W., Qiu, S., Qi, H., Zhang, L., Wan, B., & Ming, D. (2013). EEG feature comparison and classification of simple and compound limb motor imagery. Journal of NeuroEngineering and Rehabilitation, 10(1). https://doi.org/10.1186/1743-0003-10-106

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