MetaBCI¶
Welcome!¶
MetaBCI is an open-source platform for non-invasive brain computer interface. The project of MetaBCI is led by Prof. Minpeng Xu from Tianjin University, China. MetaBCI has 3 main parts:
brainda: for importing dataset, pre-processing EEG data and implementing EEG decoding algorithms.
brainflow: a high speed EEG online data processing framework.
brainstim: a simple and efficient BCI experiment paradigms design module.
This is the first release of MetaBCI, our team will continue to maintain the repository. If you need the handbook of this repository, please contact us by sending email to TBC_TJU_2022@163.com with the following information:
Name of your teamleader
Name of your university(or organization)
We will send you a copy of the handbook as soon as we receive your information.
What are we doing?¶
The problem¶
BCI datasets come in different formats and standards
It’s tedious to figure out the details of the data
Lack of python implementations of modern decoding algorithms
It’s not an easy thing to perform BCI experiments especially for the online ones.
If someone new to the BCI wants to do some interesting research, most of their time would be spent on preprocessing the data, reproducing the algorithm in the paper, and also find it difficult to bring the algorithms into BCI experiments.
The solution¶
The Meta-BCI will:
Allow users to load the data easily without knowing the details
Provide flexible hook functions to control the preprocessing flow
Provide the latest decoding algorithms
Provide the experiment UI for different paradigms (e.g. MI, P300 and SSVEP)
Provide the online data acquiring pipeline.
Allow users to bring their pre-trained models to the online decoding pipeline.
The goal of the Meta-BCI is to make researchers focus on improving their own BCI algorithms and performing their experiments without wasting too much time on preliminary preparations.
Features¶
Improvements to MOABB APIs
add hook functions to control the preprocessing flow more easily
use joblib to accelerate the data loading
add proxy options for network connection issues
add more information in the meta of data
other small changes
Supported Datasets
MI Datasets
AlexMI
BNCI2014001, BNCI2014004
PhysionetMI, PhysionetME
Cho2017
MunichMI
Schirrmeister2017
Weibo2014
Zhou2016
SSVEP Datasets
Nakanishi2015
Wang2016
BETA
Implemented BCI algorithms
Decomposition Methods
SPoC, CSP, MultiCSP and FBCSP
CCA, itCCA, MsCCA, ExtendCCA, ttCCA, MsetCCA, MsetCCA-R, TRCA, TRCA-R, SSCOR and TDCA
DSP
Manifold Learning
Basic Riemannian Geometry operations
Alignment methods
Riemann Procustes Analysis
Deep Learning
ShallowConvNet
EEGNet
ConvCA
GuneyNet
Transfer Learning
MEKT
LST
Installation¶
Clone the repo .. code-block:: sh
git clone https://github.com/TBC-TJU/MetaBCI.git
Change to the project directory .. code-block:: sh
cd MetaBCI
Install all requirements .. code-block:: sh
pip install -r requirements.txt
Install brainda package with the editable mode .. code-block:: sh
pip install -e .
## Who are we?
The MetaBCI project is carried out by researchers from
Academy of Medical Engineering and Translational Medicine, Tianjin University, China
Tianjin Brain Center, China
What do we need?¶
You! In whatever way you can help.
We need expertise in programming, user experience, software sustainability, documentation and technical writing and project management.
We’d love your feedback along the way.
Contributing¶
Contributions are what make the open source community such an amazing place to be learn, inspire, and create. Any contributions you make are greatly appreciated. Especially welcome to submit BCI algorithms.
Fork the Project
Create your Feature Branch (
git checkout -b feature/AmazingFeature)Commit your Changes (
git commit -m 'Add some AmazingFeature')Push to the Branch (
git push origin feature/AmazingFeature)Open a Pull Request
License¶
Distributed under the GNU General Public License v2.0 License. See LICENSE for more information.
Contact¶
Email: TBC_TJU_2022@163.com