基于脑电和眼球注视贝叶斯融合的混合脑机接口

Xujiong Dong, Haofei Wang, Zhaokang Chen, Bertram E. Shi
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引用次数: 20

摘要

我们描述了一个混合脑机接口,该接口集成了来自基于四类运动图像的EEG分类器的信息和来自眼动仪的凝视轨迹信息。该系统的新颖之处在于不需要用户进行明确的凝视行为。相反,用户的自然凝视行为进行概率整合,以平滑基于运动图像的EEG的噪声分类结果。目标是提供与BCI系统更自然的交互,而不是像通常那样将凝视用作明确的命令信号。我们在一个2D光标控制任务上的研究结果表明,注视信息的整合显著提高了任务完成的准确性,缩短了任务完成的时间。特别是,我们的系统在需要引导到12个目标中的一个的光标控制任务上实现了超过80%的目标完成精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Brain Computer Interface via Bayesian integration of EEG and eye gaze
We describe a hybrid brain computer interface that integrates information from a four-class motor imagery based EEG classifier with information about gaze trajectories from an eye tracker. The novel aspect of this system is that no explicit gaze behavior is required of the user. Rather, the natural gaze behavior of the user integrated probabilistically to smooth the noisy classification results from the motor imagery based EEG. The goal is to provide for a more natural interaction with the BCI system than if gaze were used as an explicit command signal, as is commonly done. Our results on a 2D cursor control task show that integration of gaze information significantly improves task completion accuracy and reduces task completion time. In particular, our system achieves over 80% target completion accuracy on a cursor control task requiring guidance to one of 12 targets.
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