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Transfer Learning Enhanced Common Spatial Pattern Filtering for Brain Computer Interfaces (BCIs): Overview and a New Approach

机译:用于脑计算机接口(BCI)的转移学习增强型通用空间模式过滤:概述和新方法

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The electroencephalogram (EEG) is the most widely used input for brain computer interfaces (BCIs), and common spatial pattern (CSP) is frequently used to spatially filter it to increase its signal-to-noise ratio. However, CSP is a supervised filter, which needs some subject-specific calibration data to design. This is time-consuming and not user-friendly. A promising approach for shortening or even completely eliminating this calibration session is transfer learning, which leverages relevant data or knowledge from other subjects or tasks. This paper reviews three existing approaches for incorporating transfer learning into CSP, and also proposes a new transfer learning enhanced CSP approach. Experiments on motor imagery classification demonstrate their effectiveness. Particularly, our proposed approach achieves the best performance when the number of target domain calibration samples is small.
机译:脑电图(EEG)是脑计算机接口(BCI)使用最广泛的输入,并且常用空间模式(CSP)对其进行空间滤波以增加其信噪比。但是,CSP是一种监督过滤器,需要一些特定于受试者的校准数据才能进行设计。这是耗时的并且不是用户友好的。缩短或什至完全消除此校准过程的一种有前途的方法是转移学习,它利用了来自其他主题或任务的相关数据或知识。本文回顾了将迁移学习整合到CSP中的三种现有方法,并提出了一种新的迁移学习增强的CSP方法。运动图像分类实验证明了其有效性。特别是,当目标域校准样本的数量较少时,我们提出的方法可实现最佳性能。

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