Suppr超能文献

通过混合模型估计器改进零训练脑机接口。

Improving zero-training brain-computer interfaces by mixing model estimators.

作者信息

Verhoeven T, Hübner D, Tangermann M, Müller K R, Dambre J, Kindermans P J

机构信息

Electronics and Informations Systems, Ghent University, Ghent, Belgium.

出版信息

J Neural Eng. 2017 Jun;14(3):036021. doi: 10.1088/1741-2552/aa6639. Epub 2017 Mar 13.

Abstract

OBJECTIVE

Brain-computer interfaces (BCI) based on event-related potentials (ERP) incorporate a decoder to classify recorded brain signals and subsequently select a control signal that drives a computer application. Standard supervised BCI decoders require a tedious calibration procedure prior to every session. Several unsupervised classification methods have been proposed that tune the decoder during actual use and as such omit this calibration. Each of these methods has its own strengths and weaknesses. Our aim is to improve overall accuracy of ERP-based BCIs without calibration.

APPROACH

We consider two approaches for unsupervised classification of ERP signals. Learning from label proportions (LLP) was recently shown to be guaranteed to converge to a supervised decoder when enough data is available. In contrast, the formerly proposed expectation maximization (EM) based decoding for ERP-BCI does not have this guarantee. However, while this decoder has high variance due to random initialization of its parameters, it obtains a higher accuracy faster than LLP when the initialization is good. We introduce a method to optimally combine these two unsupervised decoding methods, letting one method's strengths compensate for the weaknesses of the other and vice versa. The new method is compared to the aforementioned methods in a resimulation of an experiment with a visual speller.

MAIN RESULTS

Analysis of the experimental results shows that the new method exceeds the performance of the previous unsupervised classification approaches in terms of ERP classification accuracy and symbol selection accuracy during the spelling experiment. Furthermore, the method shows less dependency on random initialization of model parameters and is consequently more reliable.

SIGNIFICANCE

Improving the accuracy and subsequent reliability of calibrationless BCIs makes these systems more appealing for frequent use.

摘要

目的

基于事件相关电位(ERP)的脑机接口(BCI)包含一个解码器,用于对记录的脑信号进行分类,随后选择一个控制信号来驱动计算机应用程序。标准的监督式BCI解码器在每次会话之前都需要繁琐的校准程序。已经提出了几种无监督分类方法,这些方法在实际使用过程中调整解码器,从而省略了这种校准。这些方法中的每一种都有其自身的优缺点。我们的目标是提高基于ERP的BCI在无需校准情况下的整体准确性。

方法

我们考虑两种用于ERP信号无监督分类的方法。最近研究表明,当有足够数据时,从标签比例学习(LLP)能保证收敛到一个监督式解码器。相比之下,先前提出的用于ERP-BCI的基于期望最大化(EM)的解码则没有这种保证。然而,虽然由于其参数的随机初始化,这个解码器具有较高的方差,但当初始化良好时,它比LLP能更快地获得更高的准确率。我们引入一种方法来优化结合这两种无监督解码方法,让一种方法的优势弥补另一种方法的劣势,反之亦然。在对一个视觉拼写器实验的重新模拟中,将新方法与上述方法进行比较。

主要结果

对实验结果的分析表明,在拼写实验中,新方法在ERP分类准确率和符号选择准确率方面超过了先前的无监督分类方法。此外,该方法对模型参数随机初始化的依赖性较小,因此更可靠。

意义

提高无校准BCI的准确性和后续可靠性,使这些系统在频繁使用时更具吸引力。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验