Buttfield Anna, Ferrez Pierre W, Millán José del R
IDIAP Research Institute, CH-1920 Martigny, Switzerland.
IEEE Trans Neural Syst Rehabil Eng. 2006 Jun;14(2):164-8. doi: 10.1109/TNSRE.2006.875555.
Recent advances in the field of brain-computer interfaces (BCIs) have shown that BCIs have the potential to provide a powerful new channel of communication, completely independent of muscular and nervous systems. However, while there have been successful laboratory demonstrations, there are still issues that need to be addressed before BCIs can be used by nonexperts outside the laboratory. At IDIAP Research Institute, we have been investigating several areas that we believe will allow us to improve the robustness, flexibility, and reliability of BCIs. One area is recognition of cognitive error states, that is, identifying errors through the brain's reaction to mistakes. The production of these error potentials (ErrP) in reaction to an error made by the user is well established. We have extended this work by identifying a similar but distinct ErrP that is generated in response to an error made by the interface, (a misinterpretation of a command that the user has given). This ErrP can be satisfactorily identified in single trials and can be demonstrated to improve the theoretical performance of a BCI. A second area of research is online adaptation of the classifier. BCI signals change over time, both between sessions and within a single session, due to a number of factors. This means that a classifier trained on data from a previous session will probably not be optimal for a new session. In this paper, we present preliminary results from our investigations into supervised online learning that can be applied in the initial training phase. We also discuss the future direction of this research, including the combination of these two currently separate issues to create a potentially very powerful BCI.
脑机接口(BCI)领域的最新进展表明,BCI有潜力提供一种全新的强大通信渠道,完全独立于肌肉和神经系统。然而,尽管已有成功的实验室演示,但在BCI能够被实验室之外的非专业人员使用之前,仍有一些问题需要解决。在IDIA P研究所,我们一直在研究几个领域,我们认为这些领域将有助于提高BCI的稳健性、灵活性和可靠性。一个领域是认知错误状态的识别,即通过大脑对错误的反应来识别错误。因用户犯错而产生的这些错误电位(ErrP)已得到充分证实。我们通过识别一种类似但又不同的ErrP扩展了这项工作,这种ErrP是在接口出现错误(即对用户给出的命令的错误解读)时产生的。这种ErrP可以在单次试验中得到令人满意的识别,并且可以证明能提高BCI的理论性能。第二个研究领域是分类器的在线自适应。由于多种因素,BCI信号会随时间变化,无论是在不同会话之间还是在单个会话中。这意味着基于前一会话数据训练的分类器对于新会话可能并非最优。在本文中,我们展示了我们对可应用于初始训练阶段的监督在线学习研究的初步结果。我们还讨论了这项研究的未来方向,包括将这两个目前分开的问题结合起来,以创建一个可能非常强大的BCI。