基于自适应的点对点运动行为编码的动态运动原语

Dimitrios Papageorgiou, Antonis Sidiropoulos, Z. Doulgeri
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引用次数: 5

摘要

这项工作提出利用sinc函数作为动态运动原语(DMP)模型的内核来编码点对点的运动行为。就目前的技术状况而言,所提出的方法呈现出许多优点,因为它(i)涉及一种简单的学习技术,(ii)提供了一种基于所演示运动的频率内容确定所需的最小基函数数量的方法,以及(iii)提供了预先定义所学习行为的再现准确性的能力。通过仿真和实验证明了所提出的模型能够准确地再现该行为。与基于高斯的DMP模型的比较表明,该方法在学习的计算复杂度和特定核数的准确性方面具有优势。
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Sinc-Based Dynamic Movement Primitives for Encoding Point-to-point Kinematic Behaviors
This work proposes the utilization of sinc functions as kernels of Dynamic Movement Primitives (DMP) models for encoding point-to-point kinematic behaviors. The proposed method presents a number of advantages with respect to the state of the art, as it (i) involves a simple learning technique, (ii) provides a method to determine the minimum required number of basis functions, based on the frequency content of the demonstrated motion and (iii) provides the ability to pre-define the reproduction accuracy of the learned behavior. The ability of the proposed model to accurately reproduce the behavior is demonstrated through simulations and experiments. Comparisons with the Gaussian-based DMP model show the proposed method's superiority in terms of computational complexity of learning and accuracy for a specific number of kernels.
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