ADAPTIVE CSP FOR USER INDEPENDENCE IN MI-BCI PARADIGM FOR UPPER LIMB STROKE REHABILITATION

Ana P. Costa, Jakob S. Møller, H. Iversen, S. Puthusserypady
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引用次数: 1

Abstract

A 3-class motor imagery (MI) Brain-Computer Interface (BCI) system, that implements subject adaptation with short to non-existing calibration sessions is proposed. The proposed adaptive common spatial patterns (ACSP) algorithm was tested on two datasets (an open source data set (4-class MI), and an in-house data set (3-class MI)). Results show that when long calibration data is available, the ACSP performs only slightly better (4%) than the CSP, but for short calibration sessions, the ACSP significantly improved the performance (up to 4-fold). An investigation into class separability of the in-house data set was performed and was concluded that the "Pinch"movement was more easily discriminated than "Grasp" and "Elbow Flexion". The proposed paradigm proved feasible and provided insights to help choose the motor tasks leading to best results in potential real-life applications. The ACSP enabled a successful semi user independent scenario and showed potential to be a tool towards an improved, personalized stroke rehabilitation protocol.
自适应CSP对上肢脑卒中康复患者独立性的影响
提出了一种3级运动意象脑机接口(BCI)系统,该系统通过短至不存在的校准过程实现受试者自适应。在两个数据集(一个开源数据集(4类MI)和一个内部数据集(3类MI))上对所提出的自适应公共空间模式(ACSP)算法进行了测试。结果表明,当长时间的校准数据可用时,ACSP的性能仅略好于CSP(4%),但在短时间的校准过程中,ACSP的性能显著提高(高达4倍)。对内部数据集的类可分性进行了调查,并得出结论,“捏”动作比“抓”和“肘屈”更容易区分。所提出的范式被证明是可行的,并为帮助选择运动任务提供了见解,从而在潜在的实际应用中获得最佳结果。ACSP成功实现了半用户独立的场景,并显示出作为改进的个性化中风康复方案的工具的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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