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Errare machinale est: the use of error-related potentials in brain-machine interfaces

机译:最大的错误:在脑机接口中使用与错误相关的电位

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摘要

The ability to recognize errors is crucial for efficient behavior. Numerous studies have identified electrophysiological correlates of error recognition in the human brain (error-related potentials, ErrPs). Consequently, it has been proposed to use these signals to improve human-computer interaction (HCI) or brain-machine interfacing (BMI). Here, we present a review of over a decade of developments toward this goal. This body of work provides consistent evidence that ErrPs can be successfully detected on a single-trial basis, and that they can be effectively used in both HCI and BMI applications. We first describe the ErrP phenomenon and follow up with an analysis of different strategies to increase the robustness of a system by incorporating single-trial ErrP recognition, either by correcting the machine's actions or by providing means for its error-based adaptation. These approaches can be applied both when the user employs traditional HCI input devices or in combination with another BMI channel. Finally, we discuss the current challenges that have to be overcome in order to fully integrate ErrPs into practical applications. This includes, in particular, the characterization of such signals during real(istic) applications, as well as the possibility of extracting richer information from them, going beyond the time-locked decoding that dominates current approaches.
机译:识别错误的能力对于有效行为至关重要。许多研究已经确定了人脑中错误识别的电生理相关性(错误相关电位,ErrPs)。因此,已经提出使用这些信号来改善人机交互(HCI)或脑机接口(BMI)。在这里,我们对实现该目标的十多年发展进行了回顾。这项工作提供了一致的证据,表明可以一次尝试成功检测到ErrP,并且可以在HCI和BMI应用程序中有效使用它们。我们首先描述ErrP现象,然后对不同策略进行分析,以通过结合单次试验ErrP识别来提高系统的鲁棒性,方法是纠正机器的动作,或者通过提供基于错误的自适应方法。当用户使用传统的HCI输入设备时,或者与另一个BMI通道结合使用时,都可以应用这些方法。最后,我们讨论了将ErrP完全集成到实际应用中必须克服的当前挑战。这尤其包括在实际应用中对此类信号进行表征,以及从中提取更丰富的信息的可能性,这超出了主导当前方法的限时解码。

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