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首页> 外文期刊>Frontiers in Neurorobotics >An EEG/EMG/EOG-Based Multimodal Human-Machine Interface to Real-Time Control of a Soft Robot Hand
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An EEG/EMG/EOG-Based Multimodal Human-Machine Interface to Real-Time Control of a Soft Robot Hand

机译:基于EEG / EMG / EOG的多模式人机界面实时控制软机器人手

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Brain-computer interface (BCI) technology shows potential for application to motor rehabilitation therapies that use neural plasticity to restore motor function and improve quality of life of stroke survivors. However, it is often difficult for BCI systems to provide the variety of control commands necessary for multi-task real-time control of soft robot naturally. In this study, a novel multimodal human-machine interface system (mHMI) is developed using combinations of electrooculography (EOG), electroencephalography (EEG), and electromyogram (EMG) to generate numerous control instructions. Moreover, we also explore subject acceptance of an affordable wearable soft robot to move basic hand actions during robot-assisted movement. Six healthy subjects separately perform left and right hand motor imagery, looking-left and looking-right eye movements, and different hand gestures in different modes to control a soft robot in a variety of actions. The results indicate that the number of mHMI control instructions is significantly greater than achievable with any individual mode. Furthermore, the mHMI can achieve an average classification accuracy of 93.83% with the average information transfer rate of 47.41 bits/min, which is entirely equivalent to a control speed of 17 actions per minute. The study is expected to construct a more user-friendly mHMI for real-time control of soft robot to help healthy or disabled persons perform basic hand movements in friendly and convenient way.
机译:脑机接口(BCI)技术显示出了应用到运动康复疗法中的潜力,该疗法使用神经可塑性来恢复运动功能并改善中风幸存者的生活质量。但是,BCI系统通常很难自然地提供软机器人多任务实时控制所需的各种控制命令。在这项研究中,使用眼电图(EOG),脑电图(EEG)和肌电图(EMG)的组合开发了新颖的多模式人机界面系统(mHMI),以生成大量控制指令。此外,我们还探讨了接受价格适中的可穿戴软机器人在机器人辅助移动过程中移动基本手势的主题。六个健康的对象分别执行左手和右手运动图像,左眼和右眼的眼球运动以及不同模式下的不同手势,以各种动作控制软机器人。结果表明,mHMI控制指令的数量明显大于使用任何单独模式所能达到的数量。此外,mHMI可以实现平均分类精度93.83%,平均信息传输速率为47.41位/分钟,这完全相当于每分钟17个动作的控制速度。该研究有望构建一个更加人性化的mHMI,以实时控制软机器人,以帮助健康或残疾人以友好便捷的方式进行基本的手部动作。

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