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Robot introspection with Bayesian nonparametric vector autoregressive hidden Markov models

机译:贝叶斯非参数向量自回归隐马尔可夫模型的机器人自省

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Robot introspection, as opposed to anomaly detection typical in process monitoring, helps a robot understand what it is doing at all times. A robot should be able to identify its actions not only when failure or novelty occurs, but also as it executes any number of sub-tasks. As robots continue their quest of functioning in unstructured environments, it is imperative they understand what is it that they are actually doing to render them more robust. This work investigates the modeling ability of Bayesian nonparametric techniques on Markov Switching Process to learn complex dynamics typical in robot contact tasks. We study whether the Markov switching process, together with Bayesian priors can outperform the modeling ability of its counterparts: an HMM with Bayesian priors and without. The work was tested in a snap assembly task characterized by high elastic forces. The task consists of an insertion subtask with very complex dynamics. Our approach showed a stronger ability to generalize and was able to better model the subtask with complex dynamics in a computationally efficient way. The modeling technique is also used to learn a growing library of robot skills, one that when integrated with low-level control allows for robot online decision making. Supplemental info can be found at [1].
机译:与过程监视中常见的异常检测相反,机器人自省可以帮助机器人随时了解其运行情况。机器人不仅应该在发生故障或新颖性时,而且在执行任何数量的子任务时都能够识别其动作。随着机器人继续在非结构化环境中工作的要求,当务之急是他们必须了解他们实际上在做什么以使其更加坚固。这项工作研究了马尔可夫切换过程中贝叶斯非参数技术的建模能力,以学习机器人接触任务中典型的复杂动力学。我们研究了马尔可夫切换过程与贝叶斯先验一起能否胜过其对应模型的建模能力:具有贝叶斯先验和不具有贝叶斯先验的HMM。这项工作是在以高弹力为特征的快速装配任务中进行测试的。该任务包含一个动态非常复杂的插入子任务。我们的方法显示出更强的泛化能力,并且能够以计算有效的方式更好地对具有复杂动力学的子任务进行建模。建模技术还用于学习不断增长的机器人技能库,该库与低级控制集成后可以进行机器人在线决策。补充信息可以在[1]中找到。

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