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Towards improved BCI based on human learning principles

机译:致力于基于人类学习原则的改进BCI

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Although EEG-based BCI are very promising for numerous applications, they mostly remain prototypes not used outside laboratories, due to their low reliability. Poor BCI performances are partly due to imperfect EEG signal processing algorithms but also to the user, who may not be able to produce reliable EEG patterns. This paper presents some of our current work that aims at addressing the latter, i.e., at guiding users to learn BCI control mastery. First, this paper identifies some theoretical (based on human learning psychology models) and practical limitations of current standard BCI training approaches and thus the need for alternative ones. To try to address these limitations, we conducted a study to explore what kind of users can use a BCI and why, and will present the main results. We also present new feedback types we designed to help users to learn BCI control skills more efficiently.
机译:尽管基于EEG的BCI在众多应用中非常有前途,但由于可靠性低,它们大多仍是未在实验室外使用的原型。 BCI性能不佳部分是由于EEG信号处理算法不完善,也归因于用户,他们可能无法产生可靠的EEG模式。本文介绍了我们当前的一些工作,旨在解决后者,即指导用户学习BCI控制知识。首先,本文确定了一些理论(基于人类学习心理学模型)和当前标准BCI培训方法的实际局限性,因此需要替代方法。为了尝试解决这些限制,我们进行了一项研究,以探索什么样的用户可以使用BCI以及为什么使用BCI,并将介绍主要结果。我们还提供了新的反馈类型,旨在帮助用户更有效地学习BCI控制技能。

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