Residential College | false |
Status | 即將出版Forthcoming |
Subject-specific CNN model with parameter-based transfer learning for SSVEP detection | |
Ji, Zhouyu1; Xu, Tao2; Chen, Chuangquan1; Yin, Haojun1; Wan, Feng3,4![]() ![]() | |
2025-05-01 | |
Source Publication | Biomedical Signal Processing and Control
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ISSN | 1746-8094 |
Volume | 103Pages:107404 |
Abstract | Steady-state visual evoked potentials (SSVEP)-based brain–computer interfaces (BCIs) leverage machine learning methods to enhance performance. However, these methods require a sufficiently long time window to achieve high accuracy and information transfer rate (ITR), which restricts their applications in real-world scenarios, particularly for user-specific decoding. To address this issue, we propose a parameter-based transfer learning CNN (PTL-CNN) approach for the SSVEP-BCI system, which can automatically fuse and extract both inter- and intra-subject features in EEG signals. Specifically, we first introduce a shallow CNN architecture and adopt a short time-window to train a pretrained model on a dataset comprising numerous subjects, aiming to explore the universal features across subjects. Subsequently, a new user is utilized to fine-tune the model, calibrating it to this specific user. Experimental results demonstrate that PTL-CNN achieves remarkable performance and significantly outperforms the compared algorithms under short time windows. For instance, in a time window of 0.4 s, PTL-CNN achieves an average accuracy of 80.60% with an average ITR of 247.77 bits/min on the Benchmark dataset, and an average accuracy of 66.91% with an average ITR of 185.90 bits/min on the Beta dataset. This performance is significantly better than that of Ensemble-TRCA (Benchmark: 71.21%, 209.12 bits/min; Beta: 53.04%, 135.53 bits/min). In summary, our proposed PTL-CNN achieves the highest average accuracy with the fastest average ITR and is of implications for the development of real-time BCI applications, as well as inspiration for other application paradigms. |
Keyword | Brain–computer Interface Deep Learning Electroencephalogram (Eeg) Transfer Learning Steady-state Visual Evoked Potential (Ssvep) |
DOI | 10.1016/j.bspc.2024.107404 |
URL | View the original |
Indexed By | SCIE |
Language | 英語English |
WOS Research Area | Engineering |
WOS Subject | Engineering, Biomedical |
WOS ID | WOS:001401416900001 |
Publisher | ELSEVIER SCI LTD, 125 London Wall, London EC2Y 5AS, ENGLAND |
Scopus ID | 2-s2.0-85213080153 |
Fulltext Access | |
Citation statistics | |
Document Type | Journal article |
Collection | Faculty of Science and Technology DEPARTMENT OF ELECTRICAL AND COMPUTER ENGINEERING INSTITUTE OF COLLABORATIVE INNOVATION |
Corresponding Author | Wang, Hongtao |
Affiliation | 1.School of Electronics and Information Engineering at Wuyi University, Jiangmen, China 2.Department of Biomedical Engineering at Shantou University, Shantou, China 3.Department of Electrical and Computer Engineering, Faculty of Science and Engineering, University of Macau, Macao 4.Centre for Cognitive and Brain Sciences, Institute of Collaborative Innovation, University of Macau, Macao |
Recommended Citation GB/T 7714 | Ji, Zhouyu,Xu, Tao,Chen, Chuangquan,et al. Subject-specific CNN model with parameter-based transfer learning for SSVEP detection[J]. Biomedical Signal Processing and Control, 2025, 103, 107404. |
APA | Ji, Zhouyu., Xu, Tao., Chen, Chuangquan., Yin, Haojun., Wan, Feng., & Wang, Hongtao (2025). Subject-specific CNN model with parameter-based transfer learning for SSVEP detection. Biomedical Signal Processing and Control, 103, 107404. |
MLA | Ji, Zhouyu,et al."Subject-specific CNN model with parameter-based transfer learning for SSVEP detection".Biomedical Signal Processing and Control 103(2025):107404. |
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