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Brain-state classification and a dual-state decoder dramatically improve the control of cursor movement through a brain-machine interface

机译:脑状态分类和双状态解码器通过脑机界面大大改善了对光标移动的控制

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摘要

ObjectiveIt is quite remarkable that Brain Machine Interfaces (BMIs) can be used to control complex movements with fewer than 100 neurons. Success may be due in part to the limited range of dynamical conditions under which most BMIs are tested. Achieving high-quality control that spans these conditions with a single linear mapping will be more challenging. Even for simple reaching movements, existing BMIs must reduce the stochastic noise of neurons by averaging the control signals over time, instead of over the many neurons that normally control movement. This forces a compromise between a decoder with dynamics allowing rapid movement and one that allows postures to be maintained with little jitter. Our current work presents a method for addressing this compromise, which may also generalize to more highly varied dynamical situations, including movements with more greatly varying speed.
机译:目的值得注意的是,脑机接口(BMI)可用于控制少于100个神经元的复杂运动。成功的部分原因可能在于测试大多数BMI的动态条件范围有限。通过单个线性映射来实现跨越这些条件的高质量控制将更具挑战性。即使是简单的伸手动作,现有的BMI也必须通过平均时间上的控制信号而不是通常控制动作的许多神经元来降低神经元的随机噪声。这在具有允许快速移动的动态性的解码器与允许以很小的抖动保持姿势的解码器之间进行折衷。我们当前的工作提出了一种解决这种折衷的方法,该方法还可以推广到变化更大的动态情况,包括速度变化更大的运动。

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