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Active learning using mean shift optimization for robot grasping

机译:使用均值漂移优化进行主动学习的机器人抓取

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When children learn to grasp a new object, they often know several possible grasping points from observing a parent's demonstration and subsequently learn better grasps by trial and error. From a machine learning point of view, this process is an active learning approach. In this paper, we present a new robot learning framework for reproducing this ability in robot grasping. For doing so, we chose a straightforward approach: first, the robot observes a few good grasps by demonstration and learns a value function for these grasps using Gaussian process regression. Subsequently, it chooses grasps which are optimal with respect to this value function using a mean-shift optimization approach, and tries them out on the real system. Upon every completed trial, the value function is updated, and in the following trials it is more likely to choose even better grasping points. This method exhibits fast learning due to the data-efficiency of the Gaussian process regression framework and the fact that the mean-shift method provides maxima of this cost function. Experiments were repeatedly carried out successfully on a real robot system. After less than sixty trials, our system has adapted its grasping policy to consistently exhibit successful grasps.
机译:当孩子学会掌握一个新物体时,他们通常通过观察父母的示范来了解一些可能的掌握要点,然后通过反复试验来学习更好的掌握。从机器学习的角度来看,此过程是一种主动的学习方法。在本文中,我们提出了一种新的机器人学习框架,用于再现这种在机器人抓握中的能力。为此,我们选择了一种简单的方法:首先,机器人通过演示观察一些良好的掌握,并使用高斯过程回归学习这些掌握的值函数。随后,它使用均值漂移优化方法选择对于该值函数最佳的抓取,然后在实际系统上进行尝试。在每次完成的试验中,价值功能都会更新,在随后的试验中,它更有可能选择更好的把握点。由于高斯过程回归框架的数据效率以及均值漂移方法提供了该成本函数的最大值这一事实,该方法显示出快速的学习能力。在真实的机器人系统上成功地重复进行了实验。经过不到60次试验,我们的系统已调整其抓取策略,以始终如一地展示出成功的抓取能力。

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