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Inter- and Intra-Subject Transfer Reduces Calibration Effort for High-Speed SSVEP-Based BCIs

机译:对象间传输可降低基于高速SSVEP的BCIS的校准工作

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摘要

Objective: Steady-state visual evoked potential (SSVEP)-based brain-computer interfaces (BCIs) that can deliver a high information transfer rate (ITR) usually require subject's calibration data to learn the class- and subject-specific model parameters (e.g. the spatial filters and SSVEP templates). Normally, the amount of the calibration data for learning is proportional to the number of classes (or visual stimuli), which could be huge and consequently lead to a time-consuming calibration. This study presents a transfer learning scheme to substantially reduce the calibration effort. Methods: Inspired by the parameter-based and instance-based transfer learning techniques, we propose a subject transfer based canonical correlation analysis (stCCA) method which utilizes the knowledge within subject and between subjects, thus requiring few calibration data from a new subject. Results: The evaluation study on two SSVEP datasets (from Tsinghua and UCSD) shows that the stCCA method performs well with only a small amount of calibration data, providing an ITR at 198.18 +/- 59.12 (bits/min) with 9 calibration trials in the Tsinghua dataset and 111.04 +/- 57.24 (bits/min) with 3 trials in the UCSD dataset. Such performances are comparable to those from using the multi-stimulus CCA (msCCA) and the ensemble task-related component analysis (eTRCA) methods with the minimally required calibration data (i.e., at least 40 trials in the Tsinghua dataset and at least 12 trials in the UCSD dataset), respectively. Conclusion: Inter- and intra-subject transfer helps the recognition method achieve high ITR with extremely little calibration effort. Significance: The proposed approach saves much calibration effort without sacrificing the ITR, which would be significant for practical SSVEP-based BCIs.
机译:目的:稳态视觉诱发电位(SSVEP)基于脑电电脑接口(BCI),可以提供高信息传输速率(ITR)通常需要受试者的校准数据来学习类和主题特定的模型参数(例如空间过滤器和SSVEP模板)。通常,用于学习的校准数据的量与类别(或视觉刺激)的数量成比例,这可能是巨大的并且因此导致耗时的校准。本研究提出了转移学习方案,以大大减少校准努力。方法:由基于参数和基于实例的转移学习技术的启发,我们提出了一种基于主题的传输传输的Canonical相关分析(STCCA)方法,其利用主题和科目之间的知识,从而需要来自新主题的校准数据很少。结果:两个SSVEP数据集(来自Tsinghua和UCSD)的评估研究表明,STCCA方法仅用少量校准数据表现良好,在198.18 +/- 59.12(位/分​​钟)提供了9个校准试验的ITR Tsinghua DataSet和111.04 +/- 57.24(位/分钟)在UCSD DataSet中有3个试验。这种性能与使用多刺激CCA(MSCCA)和集合任务相关的组件分析(ETRCA)方法的性能相当,具有最小所需的校准数据(即,清华数据集中至少40个试验以及至少12个试验分别在UCSD数据集中)。结论:对象间转移有助于识别方法实现高ITR,校准努力极少。意义:拟议方法在不牺牲ITR的情况下节省了许多校准工作,这对于实际的基于SSVEP的BCI是重要的。

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    Univ Macau Fac Sci & Engn Dept Elect & Comp Engn Taipa Macao Peoples R China|Univ Macau Ctr Cognit & Brain Sci Taipa Macao Peoples R China|Univ Macau Ctr Artificial Intelligence & Robot Inst Collaborat Innovat Taipa Macao Peoples R China;

    Univ Macau Fac Sci & Engn Dept Elect & Comp Engn Taipa Macao Peoples R China|Univ Macau Ctr Cognit & Brain Sci Taipa Macao Peoples R China|Univ Macau Ctr Artificial Intelligence & Robot Inst Collaborat Innovat Taipa Macao Peoples R China;

    Univ Western Ontario Dept Comp Sci London ON N6A 5B7 Canada|Univ Western Ontario Brain Mind Inst London ON N6A 5B7 Canada;

    Univ Macau Fac Sci & Engn Dept Elect & Comp Engn Taipa Macao Peoples R China|Univ Macau Ctr Cognit & Brain Sci Taipa Macao Peoples R China|Univ Macau Ctr Artificial Intelligence & Robot Inst Collaborat Innovat Taipa Macao Peoples R China;

    Univ Lisbon ISR P-1649004 Lisbon Portugal|Univ Lisbon DBE IST P-1649004 Lisbon Portugal;

    Univ Elect Sci & Technol China Sch Life Sci & Technol Key Lab NeuroInformat Minist Educ Chengdu 610054 Peoples R China;

    Univ Calif San Diego Swartz Ctr Computat Neurosci Inst Neural Computat La Jolla CA 92023 USA;

    Univ Macau Fac Sci & Technol Dept Comp & Informat Sci Taipa Macao Peoples R China;

    Univ Macau Fac Sci & Engn Dept Elect & Comp Engn Taipa Macao Peoples R China|Univ Macau Ctr Cognit & Brain Sci Taipa Macao Peoples R China|Univ Macau Ctr Artificial Intelligence & Robot Inst Collaborat Innovat Taipa Macao Peoples R China;

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  • 正文语种 eng
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  • 关键词

    Calibration; Visualization; Electroencephalography; Frequency measurement; Brain modeling; Steady-state; Data models; Brain-computer interface; steady-state visual evoked potential; inter-subject; intra-subject; transfer learning;

    机译:校准;可视化;脑电图;频率测量;脑建模;稳态;数据模型;脑电脑界面;稳态视觉诱发潜力;互受的局部;主题内;转移学习;

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