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Universal Joint Feature Extraction for P300 EEG Classification Using Multi-Task Autoencoder (IEEE Access)

Project README

ERPENet (Multi-task Autoencoder) for P300 EEG-Based BCI

The event-related potential encoder network (ERPENet) is a multi-task autoencoder-based model, that can be applied to any ERP-related tasks.

For more details, please refer to: https://ieeexplore.ieee.org/abstract/document/8723080

Code Description (To be updated)

model.py -- contains all model builders in Keras.
train.py -- used to train the models. log file, tensorboard file, and best weights are kept.
benchmark.py -- used to evaluate the trained model; need .hdf5(weight) from the train.py file as one of the input.
X_dawn -- xDawn algorithm as one of the baseline.

Citation

Following citation format can be used for BibTex:

@ARTICLE{8723080,
author={A. {Ditthapron} and N. {Banluesombatkul} and S. {Ketrat} and E. {Chuangsuwanich} and T. {Wilaiprasitporn}},
journal={IEEE Access},
title={Universal Joint Feature Extraction for P300 EEG Classification Using Multi-Task Autoencoder},
year={2019},
volume={7},
pages={68415-68428},
doi={10.1109/ACCESS.2019.2919143},
}
Open Source Agenda is not affiliated with "Pre Trained EEG For Deep Learning" Project. README Source: IoBT-VISTEC/Pre-trained-EEG-for-Deep-Learning

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