脑-机接口
计算机科学
先验与后验
校准
脑电图
集合(抽象数据类型)
学习迁移
机器学习
人工智能
统计
心理学
数学
认识论
精神科
哲学
程序设计语言
出处
期刊:Proceedings of the IEEE
[Institute of Electrical and Electronics Engineers]
日期:2015-05-18
卷期号:103 (6): 871-890
被引量:263
标识
DOI:10.1109/jproc.2015.2404941
摘要
One of the major limitations of brain-computer interfaces (BCI) is their long calibration time, which limits their use in practice, both by patients and healthy users alike. Such long calibration times are due to the large between-user variability and thus to the need to collect numerous training electroencephalography (EEG) trials for the machine learning algorithms used in BCI design. In this paper, we first survey existing approaches to reduce or suppress calibration time, these approaches being notably based on regularization, user-to-user transfer, semi-supervised learning and a priori physiological information. We then propose new tools to reduce BCI calibration time. In particular, we propose to generate artificial EEG trials from the few EEG trials initially available, in order to augment the training set size. These artificial EEG trials are obtained by relevant combinations and distortions of the original trials available. We propose three different methods to do so. We also propose a new, fast and simple approach to perform user-to-user transfer for BCI. Finally, we study and compare offline different approaches, both old and new ones, on the data of 50 users from three different BCI data sets. This enables us to identify guidelines about how to reduce or suppress calibration time for BCI.
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