基于神经信号滤波的机器人假肢心理控制

A. Brockwell
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引用次数: 0

摘要

我们讨论了“解码”的问题,从直接测量神经元在运动皮层的意图手运动,以驱动假肢装置的目的。通过建立概率模型和使用非线性非高斯滤波技术,我们能够获得预期手部运动的估计,以及相关的标准误差。我们使用了先前最先进的模型的改进,并演示了过滤方法如何在分析从执行“中心-输出”任务的猴子收集的多神经元记录中起作用。
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Filtering of Neural Signals for Mental Control of Robotic Prosthetic Devices
We discuss the problem of "decoding" intended hand motion from direct measurement of neurons in the motor cortex, for the purpose of driving a prosthetic device. By building probabilistic models and making use of nonlinear non-Gaussian filtering techniques, we are able to obtain estimates of intended hand motion, along with associated standard errors. We use a refinement of a previous state-of-the-art model, and demonstrate how the filtering approach works in analysis of multi-neuron recordings collected from a monkey carrying out a "center-out" task.
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