EEGdenoiseNet: A benchmark dataset for deep learning solutions of EEG denoising

NCClab 7d242bb7a1 上传文件至 'data' 3 years ago
code 5dfaa792f4 Upload files to '' 3 years ago
data 7d242bb7a1 上传文件至 'data' 3 years ago
EEGdenoiseNet dataset.pdf 5dfaa792f4 Upload files to '' 3 years ago
LICENSE dd10f76f8c Add 'LICENSE' 3 years ago
README.md 5dfaa792f4 Upload files to '' 3 years ago
datacite.yml 47fecb5c60 Update 'datacite.yml' 3 years ago

README.md

EEGdenoiseNet

Deep learning networks have been increasingly attracting attention in many fields. Recently,the application of deep learning models has been brought to the field of electroencephalographydenoising, and has provided performance that is comparable to that of traditional techniques.However, the lack of well-structured, standardized dataset with benchmark limits the develop-ment of deep learning solutions for EEG denoising. Therefore, we present EEGdenoiseNet, abenchmark dataset, that is suited for training and testing deep learning-based EEG denoisingmodels, as well as for comparing the performance across different models. Our EEGdenoiseNetdataset contains 4514 clean EEG epochs, 3400 EOG epochs and 5598 EMG epochs, whichallow users producing a large number of noisy EEG epochs with ground truth for modeltraining and testing. EEGdenoiseNet also offers a set of benchmarks generated by evaluatingthe performance of four classical deep learning networks (a fully-connected network, a simple convolution network, a complex convolution network and a recurrent neural network). Ourbenchmark dataset would hopefully accelerate the development of the emerging field of deeplearning-based EEG denoising .

For more information, The paper of this dataset is publicly available on arXiv(https://arxiv.org/abs/2009.11662).

datacite.yml
Title EEGdenoiseNet: A benchmark dataset for deep learning solutions of EEG denoising
Authors Zhang,Haoming;Department of Biomedical Engineering, Southern University of Science and Technology, Shenzhen 518055, P.R. China
Zhao,Mingqi;Movement Control and Neuroplasticity Research Group, KU Leuven, Leuven 3001, Belgium
Wei,Chen;Department of Biomedical Engineering, Southern University of Science and Technology, Shenzhen 518055, P.R. China
Mantini,Dante;Movement Control and Neuroplasticity Research Group, KU Leuven, Leuven 3001, Belgium
Li,Zherui;Department of Biomedical Engineering, Southern University of Science and Technology, Shenzhen 518055, P.R. China
Liu,Quanying;Department of Biomedical Engineering, Southern University of Science and Technology, Shenzhen 518055, P.R. China
Description Deep learning networks are increasingly attracting attention in various fields, including electroencephalography (EEG) signal processing. These models provided comparable performance with that of traditional techniques. At present, however, lacks of well-structured and standardized datasets with specific benchmark limit the development of deep learning solutions for EEG denoising. Here, we present EEGdenoiseNet, a benchmark EEG dataset that is suited for training and testing deep learning-based denoising models, as well as for performance comparisons across models. EEGdenoiseNet contains 4514 clean EEG epochs, 3400 ocular artifact epochs and 5598 muscular artifact epochs, allowing users to synthesize noisy EEG epochs with the ground-truth clean EEG. We used EEGdenoiseNet to evaluate denoising performance of four classical networks (a fully-connected network, a simple and a complex convolution network, and a recurrent neural network). Our analysis suggested that deep learning methods have great potential for EEG denoising even under high noise contamination. Through EEGdenoiseNet, we hope to accelerate the development of the emerging field of deep learning-based EEG denoising.
License Creative Commons CC0 1.0 Public Domain Dedication (https://creativecommons.org/publicdomain/zero/1.0/)
References
Funding
Keywords Neuroscience
EEG
Artifact removal
Deep Learning Network
Resource Type Dataset