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Transfer learning and active transfer learning for reducing calibration data in single-trial classification of visually-evoked potentials

机译:转移学习和主动转移学习可减少视觉诱发电位的单次试验分类中的校准数据

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Single-trial Event-Related Potential (ERP) classification is a key requirement for several types of Brain-Computer Interaction (BCI) technologies. However, strong individual differences make it challenging to develop a generic single-trial ERP classifier that performs well for all subjects. Usually some subject-specific training samples need to be collected in an initial calibration session to customize the classifier. However, if implemented into an actual BCI system, then this calibration process would decrease the utility of the system, potentially decreasing its usability. In this paper we propose a Transfer Learning approach for reducing the amount of subject-specific data in online single-trial ERP classifier calibration, and an Active Transfer Learning approach for offline calibration. By applying these approaches to data from a Visually-Evoked Potential EEG experiment, we demonstrate that they improve the classification performance, given the same number of labeled subject-specific training samples. In other words, these approaches can also attain a desired level of classification accuracy with less labeling effort when compared to a randomly selected training set.
机译:单次事件相关电位(ERP)分类是几种类型的脑机交互(BCI)技术的关键要求。但是,巨大的个体差异使开发通用的单项ERP分类器具有挑战性,该分类器对所有主题都表现良好。通常,需要在初始校准会话中收集一些特定于主题的训练样本,以自定义分类器。但是,如果将其实施到实际的BCI系统中,则此校准过程将降低系统的实用性,并可能降低其可用性。在本文中,我们提出了一种转移学习方法,用于减少在线单次试用ERP分类器校准中的主题特定数据量,以及一种用于离线校准的主动转移学习方法。通过将这些方法应用于来自视觉诱发电位的脑电图实验的数据,我们证明了在给定标记的受检者特定训练样本数量相同的情况下,它们可以改善分类性能。换句话说,与随机选择的训练集相比,这些方法还可以以较少的标记工作量来达到所需的分类准确度。

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