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Dynamic Interaction Probabilistic Movement Primitives

机译:动态交互概率运动原语

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Human-robot collaboration is on the rise. Robots need to increasingly improve the efficiency and smoothness with which they assist humans by properly anticipating a human's intention. To do so, prediction models need to increase their accuracy and responsiveness. This work builds on top of Interaction Movement Primitives with phase estimation and re-formulates the framework to use dynamic human-motion observations which constantly update anticipatory motions. The original framework only considers a single fixed-duration static human observation which is used to perform only one anticipatory motion. Dynamic observations, with built-in phase estimation, yield a series of updated robot motion distributions. Co-activation is performed between the existing and newest most probably robot motion distribution. This results in smooth anticipatory robot motions that are highly accurate and with enhanced responsiveness.
机译:人机协作正在上升。机器人需要通过正确预期人类的意图来逐步提高其协助人类的效率和流畅性。为此,预测模型需要提高其准确性和响应能力。这项工作建立在具有阶段估计的“交互运动基元”的基础之上,并重新构造了框架,以使用动态的人类运动观察来不断更新预期运动。原始框架仅考虑单个固定持续时间的静态人类观察,该观察仅用于执行一个预期运动。带有内置相位估计的动态观测会产生一系列更新的机器人运动分布。在现有的和最新的最有可能的机器人运动分布之间执行共同激活。这样可以实现高度准确且具有增强响应能力的预期机器人平稳运动。

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