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Input-output mapping performance of linear and nonlinear models for estimating hand trajectories from cortical neuronal firing patterns

机译:从皮层神经元放电模式估计手部轨迹的线性和非线性模型的输入输出映射性能

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Linear and nonlinear (TDNN) models have been shown to estimate hand position using populations of action potentials collected in the pre-motor and motor cortical areas of a primate's brain. One of the applications of this discovery is to restore movement in patients suffering from paralysis. For real-time implementation of this technology, reliable and accurate signal processing models that produce small error variance in the estimated positions are required. In this paper, we compare the mapping performance of the FIR filter, gamma filter and recurrent neural network (RNN) in the peaks of reaching movements. Each approach has strengths and weaknesses that are compared experimentally. The RNN approach shows very accurate peak position estimations with small error variance.
机译:线性和非线性(TDNN)模型已被证明可以使用在灵长类动物大脑的运动前和运动皮质区域收集的动作电位来估计手的位置。该发现的应用之一是恢复瘫痪患者的运动。为了实时实施该技术,需要可靠且准确的信号处理模型,该模型会在估计位置产生很小的误差变化。在本文中,我们比较了FIR滤波器,γ滤波器和递归神经网络(RNN)在到达运动峰值时的映射性能。每种方法都有优点和缺点,可以通过实验进行比较。 RNN方法显示了非常准确的峰位置估计,且误差变化很小。

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