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Neural Decoding of Movements: From Linear to Nonlinear Trajectory Models

机译:运动的神经解码:从线性到非线性轨迹模型

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To date, the neural decoding of time-evolving physical state -for example, the path of a foraging rat or arm movements - has been largely carried out using linear trajectory models, primarily due to their computational efficiency. The possibility of better capturing the statistics of the movements using nonlinear trajectory models, thereby yielding more accurate decoded trajectories, is enticing. However, nonlinear decoding usually carries a higher computational cost, which is an important consideration in real-time settings. In this paper, we present techniques for nonlinear decoding employing modal Gaussian approximations, expectatation propagation, and Gaussian quadrature. We compare their decoding accuracy versus computation time tradeoffs based on high-dimensional simulated neural spike counts.
机译:迄今为止,主要是由于它们的计算效率,使用线性轨迹模型已在很大程度上对时间演变的物理状态进行神经解码,例如觅食大鼠或手臂运动的路径。诱人的可能性是使用非线性轨迹模型更好地捕获运动的统计信息,从而产生更准确的解码轨迹。但是,非线性解码通常会带来较高的计算成本,这是实时设置中的重要考虑因素。在本文中,我们介绍了使用模态高斯近似,期望传播和高斯正交进行非线性解码的技术。我们基于高维模拟神经尖峰计数比较了它们的解码精度与计算时间的权衡。

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