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Skill learning using temporal and spatial entropies for accurate skill acquisition

机译:使用时间和空间熵进行技能学习以准确掌握技能

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In manipulation tasks, skills are usually modeled using the continuous motion trajectories acquired in the task space. The motion trajectories obtained from a human's multiple demonstrations can be broadly divided into four portions, according to the spatial variations between the demonstrations and the time spent in the demonstrations: the portions in which a long/short time is spent, and those in which the spatial variations are large/small. In these four portions, the portions in which a long time is spent and the spatial variation is small (e.g., passing a thread through the eye of a needle) are usually modeled using a small number of parameters, even if such portions represent the movement that is essential for achieving the task. The reason for this is that these portions are slightly changed in the task space as compared with the other portions. In fact, such portions should be densely modeled using more parameters (i.e., overfitting) to improve the performance of the skill because the movements of those portions must be accurately executed to achieve the task. In this paper, we propose a method for adaptively fitting these skills based on the temporal and the spatial entropies calculated by a Gaussian mixture model. We found that it is possible to retrieve accurate motion trajectories as compared with those of well-fitted models, whereas the estimation performance is generally higher than that of an overfitted model. To validate our proposed method, we present the experimental results and evaluations when using a robot arm that performed two tasks.
机译:在操纵任务中,通常使用在任务空间中获取的连续运动轨迹来对技能进行建模。根据演示之间的空间变化和演示所花费的时间,从人类的多次演示获得的运动轨迹可大致分为四个部分:花费时间长短的部分以及其中花费时间长短的部分。空间变化大/小。在这四个部分中,花费大量时间且空间变化较小(例如,使线穿过针眼)的部分通常使用少量参数进行建模,即使这些部分代表了运动这对于完成任务至关重要。其原因是,与其他部分相比,这些部分在任务空间中略有变化。实际上,应当使用更多的参数(即,过度拟合)来对这些部分进行密集建模以提高技能的性能,因为必须精确地执行这些部分的运动才能完成任务。在本文中,我们提出了一种基于高斯混合模型计算的时间和空间熵来自适应拟合这些技能的方法。我们发现,与拟合良好的模型相比,可以检索到准确的运动轨迹,而估计性能通常高于拟合过度的模型。为了验证我们提出的方法,当使用执行两个任务的机械手时,我们将提供实验结果和评估。

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