Schwarz Andreas, Scherer Reinhold, Steyrl David, Faller Josef, Muller-Putz Gernot R
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:1049-52. doi: 10.1109/EMBC.2015.7318545.
Sensorimotor rhythm (SMR) based Brain-Computer Interfaces (BCI) typically require lengthy user training. This can be exhausting and fatiguing for the user as data collection may be monotonous and typically without any feedback for user motivation. Hence new ways to reduce user training and improve performance are needed. We recently introduced a two class motor imagery BCI system which continuously adapted with increasing run-time to the brain patterns of the user. The system was designed to provide visual feedback to the user after just five minutes. The aim of the current work was to improve user-specific online adaptation, which was expected to lead to higher performances. To maximize SMR discrimination, the method of filter-bank common spatial patterns (fbCSP) and Random Forest (RF) classifier were combined. In a supporting online study, all volunteers performed significantly better than chance. Overall peak accuracy of 88.6 ± 6.1 (SD) % was reached, which significantly exceeded the performance of our previous system by 13%. Therefore, we consider this system the next step towards fully auto-calibrating motor imagery BCIs.
基于感觉运动节律(SMR)的脑机接口(BCI)通常需要用户进行长时间的训练。这对用户来说可能会很累且令人疲惫,因为数据收集可能很单调,而且通常没有任何用于激励用户的反馈。因此,需要新的方法来减少用户训练并提高性能。我们最近推出了一种两类运动想象BCI系统,该系统会随着运行时间的增加不断适应用户的脑电模式。该系统设计为在仅五分钟后就向用户提供视觉反馈。当前工作的目的是改进特定于用户的在线自适应,预期这将带来更高的性能。为了最大化SMR辨别能力,将滤波器组公共空间模式(fbCSP)方法和随机森林(RF)分类器相结合。在一项支持性的在线研究中,所有志愿者的表现均显著高于随机水平。总体峰值准确率达到了88.6±6.1(标准差)%,比我们之前的系统性能显著提高了13%。因此,我们认为该系统是迈向完全自动校准运动想象BCI的下一步。