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Learning Partially Contracting Dynamical Systems from Demonstrations

机译:通过演示学习部分收缩的动力系统

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An algorithm for learning the dynamics of point-to-point motions from demonstrations using an autonomous nonlinear dynamical system, named contracting dynamical system primitives (CDSP), is presented. The motion dynamics are approximated using a Gaussian mixture model (GMM) and its parameters are learned subject to constraints derived from partial contraction analysis. Systems learned using the proposed method generate trajectories that accurately reproduce the demonstrations and are guaranteed to converge to a desired goal location. Additionally, the learned models are capable of quickly and appropriately adapting to unexpected spatial perturbations and changes in goal location during reproductions. The CDSP algorithm is evaluated on shapes from a publicly available human handwriting dataset and also compared with two state-of-the-art motion generation algorithms. Furthermore, the CDSP algorithm is also shown to be capable of learning and reproducing point-to-point motions directly from real-world demonstrations using a Baxter robot.
机译:提出了一种通过使用自主非线性动力学系统从演示中学习点对点运动动力学的算法,该算法称为收缩动力学系统原语(CDSP)。使用高斯混合模型(GMM)估算运动动力学,并根据部分收缩分析得出的约束来学习其参数。使用建议的方法学习的系统会生成轨迹,这些轨迹可以准确地重现演示,并保证会聚到所需的目标位置。此外,学习的模型能够快速,适当地适应复制过程中意外的空间扰动和目标位置的变化。 CDSP算法是根据公开的人类手写数据集对形状进行评估的,并且还与两种最新的运动生成算法进行了比较。此外,CDSP算法还被证明能够直接使用百特机器人从真实世界的演示中学习和再现点对点运动。

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