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Task-Specific Generalization of Discrete and Periodic Dynamic Movement Primitives

机译:离散和周期性动态运动基元的特定于任务的概括

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Acquisition of new sensorimotor knowledge by imitation is a promising paradigm for robot learning. To be effective, action learning should not be limited to direct replication of movements obtained during training but must also enable the generation of actions in situations a robot has never encountered before. This paper describes a methodology that enables the generalization of the available sensorimotor knowledge. New actions are synthesized by the application of statistical methods, where the goal and other characteristics of an action are utilized as queries to create a suitable control policy, taking into account the current state of the world. Nonlinear dynamic systems are employed as a motor representation. The proposed approach enables the generation of a wide range of policies without requiring an expert to modify the underlying representations to account for different task-specific features and perceptual feedback. The paper also demonstrates that the proposed methodology can be integrated with an active vision system of a humanoid robot. 3-D vision data are used to provide query points for statistical generalization. While 3-D vision on humanoid robots with complex oculomotor systems is often difficult due to the modeling uncertainties, we show that these uncertainties can be accounted for by the proposed approach.
机译:通过模仿获得新的感觉运动知识是机器人学习的有希望的范例。为了有效,动作学习不应仅限于直接复制训练中获得的动作,而必须在机器人从未遇到过的情况下能够生成动作。本文介绍了一种方法,可以推广可用的感觉运动知识。新的动作是通过统计方法的应用来综合的,其中,将动作的目标和其他特征用作查询,以在考虑到当前世界情况的情况下创建合适的控制策略。非线性动态系统被用作电动机表示。所提出的方法使得能够生成广泛的策略,而无需专家修改底层表示以解决不同的任务特定功能和感知反馈。本文还证明了所提出的方法可以与人形机器人的主动视觉系统集成。 3-D视觉数据用于提供统计通用的查询点。尽管由于建模的不确定性,通常很难在具有复杂动眼系统的类人机器人上进行3-D视觉观察,但我们证明了这些不确定性可以由提出的方法解决。

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