CropCat: Data Augmentation for Smoothing the Feature Distribution of EEG Signals

被引:2
作者
Kim, Sung-Jin [1 ]
Lee, Dae-Hyeok [2 ]
Choi, Yeon-Woo [2 ]
机构
[1] Korea Univ, Dept Artificial Intelligence, Seoul, South Korea
[2] Korea Univ, Dept Brain & Cognit Engn, Seoul, South Korea
来源
2023 11TH INTERNATIONAL WINTER CONFERENCE ON BRAIN-COMPUTER INTERFACE, BCI | 2023年
关键词
brain-computer interface; electroencephalogram; data augmentation; motor imagery;
D O I
10.1109/BCI57258.2023.10078539
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Brain-computer interface (BCI) is a communication system between humans and computers reflecting human intention without using a physical control device. Since deep learning is robust in extracting features from data, research on decoding electroencephalograms by applying deep learning has progressed in the BCI domain. However, the application of deep learning in the BCI domain has issues with a lack of data and overconfidence. To solve these issues, we proposed a novel data augmentation method, CropCat. CropCat consists of two versions, CropCat-spatial and CropCat-temporal. We designed our method by concatenating the cropped data after cropping the data, which have different labels in spatial and temporal axes. In addition, we adjusted the label based on the ratio of cropped length. As a result, the generated data from our proposed method assisted in revising the ambiguous decision boundary into apparent caused by a lack of data. Due to the effectiveness of the proposed method, the performance of the four EEG signal decoding models is improved in two motor imagery public datasets compared to when the proposed method is not applied. Hence, we demonstrate that generated data by CropCat smooths the feature distribution of EEG signals when training the model.
引用
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页数:4
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