Stan Zakrzewski, Bartlomiej Stasiak, Tomasz Klepaczka, A. Wojciechowski
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VR-oriented EEG signal classification of motor imagery tasks
Virtual Reality (VR) combined with near real-time EEG signal processing can be used as an improvement to already existing rehabilitation techniques, enabling practitioners and therapists to get immersed into a virtual environment together with patients. The goal of this study is to propose a classification model along with all preprocessing and feature extraction steps, able to produce satisfying results while maintaining near real time performance. The proposed solutions are tested on an EEG signal dataset, containing left/right hand motor imagery movement experiments performed by 52 subjects. Performance of different models is measured using accuracy score and execution time both in the testing and training phase. In conclusion, one model is proposed as optimal with respect to the requirements of potential patient rehabilitation procedures.
期刊介绍:
Human Technology is an interdisciplinary, multiscientific journal focusing on the human aspects of our modern technological world. The journal provides a forum for innovative and original research on timely and relevant topics with the goal of exploring current issues regarding the human dimension of evolving technologies and, then, providing new ideas and effective solutions for addressing the challenges. Focusing on both everyday and professional life, the journal is equally interested in, for example, the social, psychological, educational, cultural, philosophical, cognitive scientific, and communication aspects of human-centered technology. Special attention shall be paid to information and communication technology themes that facilitate and support the holistic human dimension in the future information society.