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Kalman filtering naturally accounts for visually guided and predictive smooth pursuit dynamics

机译:卡尔曼滤波自然地考虑了视觉引导和预测的平滑追随动力学

摘要

The brain makes use of noisy sensory inputs to produce eye, head, or arm motion. In most instances, the brain combines this sensory information with predictions about future events. Here, we propose that Kalman filtering can account for the dynamics of both visually guided and predictive motor behaviors within one simple unifying mechanism. Our model relies on two Kalman filters: (1) one processing visual information about retinal input; and (2) one maintaining a dynamic internal memory of target motion. The outputs of both Kalman filters are then combined in a statistically optimal manner, i.e., weighted with respect to their reliability. The model was tested on data from several smooth pursuit experiments and reproduced all major characteristics of visually guided and predictive smooth pursuit. This contrasts with the common belief that anticipatory pursuit, pursuit maintenance during target blanking, and zero-lag pursuit of sinusoidally moving targets all result from different control systems. This is the first instance of a model integrating all aspects of pursuit dynamics within one coherent and simple model and without switching between different parallel mechanisms. Our model suggests that the brain circuitry generating a pursuit command might be simpler than previously believed and only implement the functional equivalents of two Kalman filters whose outputs are optimally combined. It provides a general framework of how the brain can combine continuous sensory information with a dynamic internal memory and transform it into motor commands.
机译:大脑利用嘈杂的感觉输入来产生眼睛,头部或手臂的运动。在大多数情况下,大脑会将这些感官信息与对未来事件的预测结合在一起。在这里,我们提出卡尔曼滤波可以在一个简单的统一机制中考虑视觉引导和预测性电机行为的动力学。我们的模型依赖于两个卡尔曼滤波器:(1)一个处理有关视网膜输入的视觉信息; (2)维持目标运动的动态内部记忆。然后将两个卡尔曼滤波器的输出以统计上最佳的方式进行组合,即对其可靠性进行加权。该模型对来自几个平滑跟踪实验的数据进行了测试,并再现了视觉引导和预测平滑跟踪的所有主要特征。这与普遍的看法形成了鲜明的对比,即预期的追踪,目标消隐期间的追踪维持以及正弦运动目标的零滞后追踪均来自不同的控制系统。这是一个模型的第一个实例,该模型在一个连贯且简单的模型中集成了追踪动力学的所有方面,并且无需在不同的并行机制之间进行切换。我们的模型表明,生成追踪命令的大脑电路可能比以前认为的更简单,并且仅实现两个卡尔曼滤波器的等效功能,其输出被最佳组合。它提供了大脑如何将连续的感官信息与动态内部记忆相结合并将其转化为运动命令的通用框架。

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