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dc.contributor.authorHuang, Xiuyu
dc.contributor.authorLiang, Shuang
dc.contributor.authorZhang, Yuanpeng
dc.contributor.authorZhou, Nan
dc.contributor.authorPedrycz, Witold
dc.contributor.authorChoi, Kup-Sze
dc.date.accessioned2023-05-29T12:43:08Z
dc.date.available2023-05-29T12:43:08Z
dc.identifier.citationHuang X., Liang S., Zhang Y., Zhou N., Pedrycz W., Choi K., "Relation Learning Using Temporal Episodes for Motor Imagery Brain-Computer Interfaces", IEEE Transactions on Neural Systems and Rehabilitation Engineering, cilt.31, ss.530-543, 2023
dc.identifier.issn1534-4320
dc.identifier.othervv_1032021
dc.identifier.otherav_1fca687f-1730-4c7c-8460-0c94549bb7a6
dc.identifier.urihttp://hdl.handle.net/20.500.12627/188873
dc.identifier.urihttps://doi.org/10.1109/tnsre.2022.3228216
dc.identifier.urihttps://avesis.istanbul.edu.tr/api/publication/1fca687f-1730-4c7c-8460-0c94549bb7a6/file
dc.description.abstractFor practical motor imagery (MI) brain-computer interface (BCI) applications, generating a reliable model for a target subject with few MI trials is important since the data collection process is labour-intensive and expensive. In this paper, we address this issue by proposing a few-shot learning method called temporal episode relation learning (TERL). TERL models MI with only limited trials from the target subject by the ability to compare MI trials through episode-based training. It can be directly applied to a new user without being re-trained, which is vital to improve user experience and realize real-world MIBCI applications. We develop a new and effective approach where, unlike the original episode learning, the temporal pattern between trials in each episode is encoded during the learning to boost the classification performance. We also perform an online evaluation simulation, in addition to the offline analysis that the previous studies only conduct, to better understand the performance of different approaches in real-world scenario. Extensive experiments are completed on four publicly available MIBCI datasets to evaluate the proposed TERL. Results show that TERL outperforms baseline and recent state-of-the-art methods, demonstrating competitive performance for subject-specific MIBCI where few trials are available from a target subject and a considerable number of trials from other source subjects.
dc.language.isoeng
dc.subjectMÜHENDİSLİK, BİYOMEDİKAL
dc.subjectDahiliye
dc.subjectGenel Sinirbilim
dc.subjectBiyomedikal mühendisliği
dc.subjectFizik Bilimleri
dc.subjectRehabilitasyon
dc.subjectTemel Bilimler
dc.subjectYaşam Bilimleri (LIFE)
dc.subjectKlinik Tıp
dc.subjectMühendislik
dc.subjectSinirbilim ve Davranış
dc.subjectREHABİLİTASYON
dc.subjectTIP, GENEL & DAHİLİ
dc.subjectSİNİR BİLİMİ
dc.subjectMühendislik ve Teknoloji
dc.subjectTemel Tıp Bilimleri
dc.subjectSağlık Bilimleri
dc.subjectYaşam Bilimleri
dc.subjectBiyomedikal Mühendisliği
dc.subjectFiziksel Tıp ve Rehabilitasyon
dc.subjectDahili Tıp Bilimleri
dc.subjectTıp
dc.subjectKlinik Tıp (MED)
dc.subjectMühendislik, Bilişim ve Teknoloji (ENG)
dc.titleRelation Learning Using Temporal Episodes for Motor Imagery Brain-Computer Interfaces
dc.typeMakale
dc.relation.journalIEEE Transactions on Neural Systems and Rehabilitation Engineering
dc.contributor.departmentHong Kong Polytechnic University , ,
dc.identifier.volume31
dc.identifier.startpage530
dc.identifier.endpage543
dc.contributor.firstauthorID4255254


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