首页> 外文会议>Proceedings of the IEEE/RAS-EMBS International Conference on Rehabilitation Robotics >Decoding force from multiunit recordings from the median nerve
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Decoding force from multiunit recordings from the median nerve

机译:正中神经多单位记录的解码力

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Much attention has been focused on the detection of volitionary motor commands from the efferent Peripheral Nervous System as a control signal for an advanced prosthetic limb, or the delivery of artificial sensory data to the Peripheral Nervous System as feedback. Less explored has been the potential for natural sensory signals to act as sensor input to neuroprosthetic systems. Many conditions with paralysis as a symptom leave the afferent peripheral nervous system functional, and potentially available as a feedback signal to a control system. In order to demonstrate the feasibility of using such a signal we decode a multiunit afferent nerve signal and use an extreme learning machine to perform a regression to decode force data. From this we were able to show that afferent signals from the fingertip can be decoded into force profiles.
机译:人们已经将许多注意力集中在检测来自传出的周围神经系统的自愿运动命令,作为高级假肢的控制信号,或者将人工感觉数据作为反馈传递给周围神经系统。对于自然感觉信号充当神经修复系统的传感器输入的潜力的研究较少。许多以麻痹为症状的疾病使传入的周围神经系统功能正常,并有可能作为控制系统的反馈信号。为了证明使用这种信号的可行性,我们对多单位传入神经信号进行解码,并使用极限学习机进行回归以对力数据进行解码。由此我们可以证明,指尖传入的信号可以解码为力分布。

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