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Real-time Fusion of Gaze and EMG for a Reaching Neuroprosthesis

机译:凝视和EMG的实时融合,即达到神经调节剂

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For rehabilitative devices to restore functional movement to paralyzed individuals, user intent must be determined from signals that remain under voluntary control. Tracking eye movements is a natural way to learn about an intended reach target and, when combined with just a small set of electromyograms (EMGs) in a probabilistic mixture model, can reliably generate accurate trajectories even when the target information is uncertain. To experimentally assess the effectiveness of our algorithm in closed-loop control, we developed a robotic system to simulate a reaching neuroprosthetic. Incorporating target information by tracking subjects' gaze greatly improved performance when the set of EMGs was most limited. In addition we found that online performance was better than predicted by the offline accuracy of the training data. By enhancing the trajectory model with target information the decoder relied less on neural control signals, reducing the burden on the user.
机译:对于恢复瘫痪个体的恢复功能运动的恢复设备,必须从留在自愿控制下的信号中确定用户意图。跟踪眼球运动是一种自然的方式来了解预期的到达目标,并且当与概率混合模型中只有一小组电灰度(EMG)结合时,即使当目标信息不确定,也可以可靠地产生精确的轨迹。为了通过实验评估我们算法在闭环控制中的效果,我们开发了一种机器人系统来模拟到达神经调节剂。通过跟踪主题的凝视在最有限的情况下,通过跟踪主题的凝视来结合目标信息。此外,我们发现在线性能优于培训数据的离线准确性更好。通过使用目标信息增强轨迹模型,解码器依赖于神经控制信号,减少了用户的负担。

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