Data Augmentation: Using Channel-Level Recombination to Improve Classification Performance for Motor Imagery EEG
The quality and quantity of training data are crucial to the performance of a deep-learning-based brain-computer interface (BCI) system. However, it is not practical to record EEG data over several long calibration sessions. A promising time- and cost-efficient solution is artificial data generation...
Main Authors: | Yu Pei, Zhiguo Luo, Ye Yan, Huijiong Yan, Jing Jiang, Weiguo Li, Liang Xie, Erwei Yin |
---|---|
Format: | Article |
Language: | English |
Published: |
Frontiers Media S.A.
2021-03-01
|
Series: | Frontiers in Human Neuroscience |
Subjects: | |
Online Access: | https://www.frontiersin.org/articles/10.3389/fnhum.2021.645952/full |
Similar Items
-
A Tensor-Based Frequency Features Combination Method for Brain–Computer Interfaces
by: Yu Pei, et al.
Published: (2022-01-01) -
TDLNet: Transfer Data Learning Network for Cross-Subject Classification Based on Multiclass Upper Limb Motor Imagery EEG
by: Jingfeng Bi, et al.
Published: (2023-01-01) -
Motor Imagery Classification for Asynchronous EEG-Based Brain–Computer Interfaces
by: Huanyu Wu, et al.
Published: (2024-01-01) -
Optimal Sensor Set for Decoding Motor Imagery from EEG
by: Arnau Dillen, et al.
Published: (2023-03-01) -
Speech2EEG: Leveraging Pretrained Speech Model for EEG Signal Recognition
by: Jinzhao Zhou, et al.
Published: (2023-01-01)