Abstract:
Brain computer interfaces (BCI) are used for communication and rehabilitation. One of the main categories of BCI techniques is motor imagery based BCI (MI-BCI). A large n...Show MoreMetadata
Abstract:
Brain computer interfaces (BCI) are used for communication and rehabilitation. One of the main categories of BCI techniques is motor imagery based BCI (MI-BCI). A large number of studies have focused on machine learning approaches to optimize MI-BCI performance. However, enhancement of MI-BCI through provision of optimized feedback modalities has not received equal attention. Motor imagery and motor execution activate almost the same area of the brain. During motor skills performance, a combination of proprioceptive and direct visual feedback (PDVF) is provided. Thus, we hypothesized that MI-BCI that receives PDVF outperforms the traditional MI-BCI, which only uses indirect visual feedback (IVF). We studied 8 healthy subjects performing MI through (i) IVF and (ii) PDVF. We used 8 channel electroencephalogram (EEG) signals and extracted features using an autoregressive model and classified MIs using linear regression. On average, PDVF increased the accuracy of MI performance by 11%, and improved information transfer rate (ITR) by more than two times. In conclusion, using PDVF appears to improve MI-BCI performance according to the studied metrics, making this approach potentially more reliable.
Date of Conference: 22-24 April 2015
Date Added to IEEE Xplore: 02 July 2015
Electronic ISBN:978-1-4673-6389-1
ISSN Information:
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- IEEE Keywords
- Index Terms
- Feedback Modalities ,
- Brain Areas ,
- Proprioceptive ,
- Autoregressive Model ,
- Visual Feedback ,
- Direct Feedback ,
- Motor Imagery ,
- Indirect Feedback ,
- Fast Fourier Transform ,
- Electromyography ,
- Near-infrared Spectroscopy ,
- EEG Signals ,
- Motor Learning ,
- Orthosis ,
- Auditory Feedback ,
- Trial Onset ,
- Online Sessions ,
- Event-related Desynchronization ,
- Maximum Entropy Method ,
- Augmented Feedback ,
- Screening Session ,
- Event-related Synchronization ,
- Sensorimotor Rhythm ,
- Cursor Position ,
- Features Of EEG Signals ,
- Brain-computer Interface Applications
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Feedback Modalities ,
- Brain Areas ,
- Proprioceptive ,
- Autoregressive Model ,
- Visual Feedback ,
- Direct Feedback ,
- Motor Imagery ,
- Indirect Feedback ,
- Fast Fourier Transform ,
- Electromyography ,
- Near-infrared Spectroscopy ,
- EEG Signals ,
- Motor Learning ,
- Orthosis ,
- Auditory Feedback ,
- Trial Onset ,
- Online Sessions ,
- Event-related Desynchronization ,
- Maximum Entropy Method ,
- Augmented Feedback ,
- Screening Session ,
- Event-related Synchronization ,
- Sensorimotor Rhythm ,
- Cursor Position ,
- Features Of EEG Signals ,
- Brain-computer Interface Applications
- Author Keywords