Neuro Computing Systems

Research Lab at KTH Stockholm, Sweden

Gumpy: a Python toolbox suitable for hybrid brain–computer interfaces


Journal article


Zied Tayeb, Nicolai Waniek, Juri Fedjaev, N. Ghaboosi, Leonard Rychly, Christian Widderich, Christoph Richter, Jonas Braun, Matteo Saveriano, G. Cheng, J. Conradt
Journal of Neural Engineering, 2018

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APA   Click to copy
Tayeb, Z., Waniek, N., Fedjaev, J., Ghaboosi, N., Rychly, L., Widderich, C., … Conradt, J. (2018). Gumpy: a Python toolbox suitable for hybrid brain–computer interfaces. Journal of Neural Engineering.


Chicago/Turabian   Click to copy
Tayeb, Zied, Nicolai Waniek, Juri Fedjaev, N. Ghaboosi, Leonard Rychly, Christian Widderich, Christoph Richter, et al. “Gumpy: a Python Toolbox Suitable for Hybrid Brain–Computer Interfaces.” Journal of Neural Engineering (2018).


MLA   Click to copy
Tayeb, Zied, et al. “Gumpy: a Python Toolbox Suitable for Hybrid Brain–Computer Interfaces.” Journal of Neural Engineering, 2018.


BibTeX   Click to copy

@article{zied2018a,
  title = {Gumpy: a Python toolbox suitable for hybrid brain–computer interfaces},
  year = {2018},
  journal = {Journal of Neural Engineering},
  author = {Tayeb, Zied and Waniek, Nicolai and Fedjaev, Juri and Ghaboosi, N. and Rychly, Leonard and Widderich, Christian and Richter, Christoph and Braun, Jonas and Saveriano, Matteo and Cheng, G. and Conradt, J.}
}

Abstract

Objective. The objective of this work is to present gumpy, a new free and open source Python toolbox designed for hybrid brain–computer interface (BCI). Approach. Gumpy provides state-of-the-art algorithms and includes a rich selection of signal processing methods that have been employed by the BCI community over the last 20 years. In addition, a wide range of classification methods that span from classical machine learning algorithms to deep neural network models are provided. Gumpy can be used for both EEG and EMG biosignal analysis, visualization, real-time streaming and decoding. Results. The usage of the toolbox was demonstrated through two different offline example studies, namely movement prediction from EEG motor imagery, and the decoding of natural grasp movements with the applied finger forces from surface EMG (sEMG) signals. Additionally, gumpy was used for real-time control of a robot arm using steady-state visually evoked potentials (SSVEP) as well as for real-time prosthetic hand control using sEMG. Overall, obtained results with the gumpy toolbox are comparable or better than previously reported results on the same datasets. Significance. Gumpy is a free and open source software, which allows end-users to perform online hybrid BCIs and provides different techniques for processing and decoding of EEG and EMG signals. More importantly, the achieved results reveal that gumpy’s deep learning toolbox can match or outperform the state-of-the-art in terms of accuracy. This can therefore enable BCI researchers to develop more robust decoding algorithms using novel techniques and hence chart a route ahead for new BCI improvements.