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김성필

Kim, Sung-Phil
Brain-Computer Interface Lab.
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A comprehensive dataset for home appliance control using ERP-based BCIs with the application of inter-subject transfer learning

Author(s)
Lee, JongminKim, MinjuHeo, DojinKim, JongsuKim, Min-KiLee, TaejunPark, JongwooKim, HyunYoungHwang, MinhoKim, LaehyunKim, Sung-Phil
Issued Date
2024-02
DOI
10.3389/fnhum.2024.1320457
URI
https://scholarworks.unist.ac.kr/handle/201301/81606
Citation
FRONTIERS IN HUMAN NEUROSCIENCE, v.18, pp.1320457
Abstract
Brain-computer interfaces (BCIs) have a potential to revolutionize human-computer interaction by enabling direct links between the brain and computer systems. Recent studies are increasingly focusing on practical applications of BCIs-e.g., home appliance control just by thoughts. One of the non-invasive BCIs using electroencephalography (EEG) capitalizes on event-related potentials (ERPs) in response to target stimuli and have shown promise in controlling home appliance. In this paper, we present a comprehensive dataset of online ERP-based BCIs for controlling various home appliances in diverse stimulus presentation environments. We collected online BCI data from a total of 84 subjects among whom 60 subjects controlled three types of appliances (TV: 30, door lock: 15, and electric light: 15) with 4 functions per appliance, 14 subjects controlled a Bluetooth speaker with 6 functions via an LCD monitor, and 10 subjects controlled air conditioner with 4 functions via augmented reality (AR). Using the dataset, we aimed to address the issue of inter-subject variability in ERPs by employing the transfer learning in two different approaches. The first approach, "within-paradigm transfer learning," aimed to generalize the model within the same paradigm of stimulus presentation. The second approach, "cross-paradigm transfer learning," involved extending the model from a 4-class LCD environment to different paradigms. The results demonstrated that transfer learning can effectively enhance the generalizability of BCIs based on ERP across different subjects and environments.
Publisher
FRONTIERS MEDIA SA
ISSN
1662-5161
Keyword (Author)
ERP-based BCIEEGtransfer learningBCI datasethome appliance
Keyword
COMPUTERVARIABILITYGAMES

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