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Flexible internal body models for motor control: On the convergence of constrained dual quaternion mean of multiple computation networks

机译:灵活的电机控制内部模型:关于多个计算网络的约束双四元数平均值的收敛性

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While internal models are recruited in many tasks and can subserve in this way perception and cognition, it is important that they are grounded and embodied in sensorimotor representation. In this paper we analyze an internal model of the body and show how it can be used for motor control. We extend the Mean of Multiple Computation principle to a dual quaternion representation of transformation and show how this can be directly applied to the control of a simulated robot leg. The model is encoded as a recurrent neural network acting as an autoassociator that is able to solve any kinematic problem in an iterative fashion. We will analyze the convergence properties, especially when additional constraints (acting on the joint level) are introduced that restrict the attractor space.
机译:尽管内部模型在许多任务中都是可以招募的,并且可以通过这种方式来服从感知和认知,但重要的是,它们必须扎根并体现在感觉运动表现中。在本文中,我们分析了身体的内部模型,并展示了如何将其用于电机控制。我们将“多重计算的均值”原理扩展到转换的双四元数表示形式,并展示了如何将其直接应用于模拟机器人腿的控制。该模型被编码为循环神经网络,该网络充当自动关联者,能够以迭代方式解决任何运动学问题。我们将分析收敛性,特别是在引入了限制吸引子空间的其他约束(作用于关节级别)时。

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