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基于 GOM-Face 的多模态接口:GKP、EOG 和 EMG,及其在仿人机器人控制中的应用。

GOM-Face: GKP, EOG, and EMG-based multimodal interface with application to humanoid robot control.

出版信息

IEEE Trans Biomed Eng. 2014 Feb;61(2):453-62. doi: 10.1109/TBME.2013.2280900.

Abstract

We present a novel human-machine interface, called GOM-Face , and its application to humanoid robot control. The GOM-Face bases its interfacing on three electric potentials measured on the face: 1) glossokinetic potential (GKP), which involves the tongue movement; 2) electrooculogram (EOG), which involves the eye movement; 3) electromyogram, which involves the teeth clenching. Each potential has been individually used for assistive interfacing to provide persons with limb motor disabilities or even complete quadriplegia an alternative communication channel. However, to the best of our knowledge, GOM-Face is the first interface that exploits all these potentials together. We resolved the interference between GKP and EOG by extracting discriminative features from two covariance matrices: a tongue-movement-only data matrix and eye-movement-only data matrix. With the feature extraction method, GOM-Face can detect four kinds of horizontal tongue or eye movements with an accuracy of 86.7% within 2.77 s. We demonstrated the applicability of the GOM-Face to humanoid robot control: users were able to communicate with the robot by selecting from a predefined menu using the eye and tongue movements.

摘要

我们提出了一种新的人机接口,称为 GOM-Face,并将其应用于仿人机器人控制。GOM-Face 的接口基于面部测量的三个电势:1)运动光泽电位(GKP),涉及舌头运动;2)眼电图(EOG),涉及眼球运动;3)肌电图,涉及牙齿紧咬。每个电势都单独用于辅助接口,为肢体运动障碍甚至完全四肢瘫痪的人提供替代的通信通道。然而,据我们所知,GOM-Face 是第一个利用所有这些电势的接口。我们通过从两个协方差矩阵中提取判别特征来解决 GKP 和 EOG 之间的干扰:一个仅包含舌运动数据的矩阵和一个仅包含眼球运动数据的矩阵。通过特征提取方法,GOM-Face 可以在 2.77 秒内以 86.7%的准确率检测到四种水平舌或眼球运动。我们展示了 GOM-Face 对仿人机器人控制的适用性:用户可以通过使用眼睛和舌头运动从预定义菜单中选择与机器人进行通信。

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