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A hybrid Body-Machine Interface integrating signals from muscles and motions

机译:一个混合体机界面集成来自肌肉和运动的信号

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摘要

Objective. Body-Machine Interfaces (BoMIs) establish a way to operate a variety of devices, allowing their users to extend the limits of their motor abilities by exploiting the redundancy of muscles and motions that remain available after spinal cord injury or stroke. Here, we considered the integration of two types of signals, motion signals derived from inertial measurement units (IMUs) and muscle activities recorded with electromyography (EMG), both contributing to the operation of the BoMI. Approach. A direct combination of IMU and EMG signals might result in inefficient control due to the differences in their nature. Accordingly, we used a nonlinearregression- based approach to predict IMU from EMG signals, after which the predicted and actual IMU signals were combined into a hybrid control signal. The goal of this approach was to provide users with the possibility to switch seamlessly between movement and EMG control, using the BoMI as a tool for promoting the engagement of selected muscles. We tested the interface in three control modalities, EMG-only, IMU-only and hybrid, in a cohort of 15 unimpaired participants. Participants practiced reaching movements by guiding a computer cursor over a set of targets. Main results. We found that the proposed hybrid control led to comparable performance to IMU-based control and significantly outperformed the EMG-only control. Results also indicated that hybrid cursor control was predominantly influenced by EMG signals. Significance. We concluded that combining EMG with IMU signals could be an efficient way to target muscle activations while overcoming the limitations of an EMG-only control.
机译:客观的。机器机接口(BOMIS)建立一种操作各种设备的方法,使其用户通过利用脊髓损伤或中风仍然可用的肌肉和运动的冗余来扩展其电机能力的极限。这里,我们考虑了两种类型的信号的集成,来自惯性测量单元(IMU)的运动信号和用肌电图(EMG)记录的肌肉活动,两者都有助于Bomi的操作。方法。由于自然界的差异,IMU和EMG信号的直接组合可能导致控制效率低下。因此,我们使用了基于非线性的方法来预测来自EMG信号的IMU,之后将预测和实际的IMU信号组合成混合控制信号。这种方法的目标是为用户提供可以在运动和EMG控制之间无缝切换的可能性,以便使用BOMI作为促进所选肌肉的接合的工具。我们在三个未受损的参与者的队列中测试了三个控制模式,EMG-only,IMU和混合动力车的界面。参与者通过引导一组目标指导计算机光标来达到移动。主要结果。我们发现,所提出的混合控制导致了对基于IMU的控制的可比性,并且显着优于唯一的控制。结果还表明,混合光标控制主要受EMG信号的影响。意义。我们得出结论,将EMG与IMU信号相结合,可以是瞄准肌肉激活的有效方法,同时克服仅唯一控制的互动控制。

著录项

  • 来源
    《Journal of neural engineering》 |2020年第4期|046004.1-046004.14|共14页
  • 作者单位

    Department of Informatics Bioengineering Robotics and Systems Engineering University of Genoa 16145 Genoa Italy Department of Physiology Feinberg School of Medicine Northwestern University Chicago IL 60611 United States of America Shirley Ryan Ability Lab Chicago IL 60611 United States of America;

    Department of Informatics Bioengineering Robotics and Systems Engineering University of Genoa 16145 Genoa Italy Translational Neuroengineering Center for Neuroprosthetics and Institute of Bioengineering School of Engineering Ecole Polytechnique Federale de Lausanne (EPFL) Geneva 1202 Switzerland;

    Department of Physiology Feinberg School of Medicine Northwestern University Chicago IL 60611 United States of America Shirley Ryan Ability Lab Chicago IL 60611 United States of America Department of Robotics Brain and Cognitive Sciences Istituto Italiano di Tecnologia Via Enrico Melen 83 16152 Genoa Italy;

    Department of Physiology Feinberg School of Medicine Northwestern University Chicago IL 60611 United States of America Shirley Ryan Ability Lab Chicago IL 60611 United States of America;

    Department of Informatics Bioengineering Robotics and Systems Engineering University of Genoa 16145 Genoa Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    human-machine interface; motor control; electromyography; motor learning; body-machine interface;

    机译:人机接口;电机控制;肌电图;运动学习;机床界面;

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