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Global Search with Bernoulli Alternation Kernel for Task-oriented Grasping Informed by Simulation

机译:通过仿真通知Bernoulli备用内核进行全局搜索以实现面向任务的抓取

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We develop an approach that benefits from large simulated datasets and takes full advantage of the limited online data that is most relevant. We propose a variant of Bayesian optimization that alternates between using informed and uninformed kernels. With this Bernoulli Alternation Kernel we ensure that discrepancies between simulation and reality do not hinder adapting robot control policies online. The proposed approach is applied to a challenging real-world problem of task-oriented grasping with novel objects. Our further contribution is a neural network architecture and training pipeline that use experience from grasping objects in simulation to learn grasp stability scores. We learn task scores from a labeled dataset with a convolutional network, which is used to construct an informed kernel for our variant of Bayesian optimization. Experiments on an ABB Yumi robot with real sensor data demonstrate success of our approach, despite the challenge of fulfilling task requirements and high uncertainty over physical properties of objects.
机译:我们开发了一种从大型模拟数据集中受益的方法,并充分利用了最相关的有限在线数据。我们提出了一种贝叶斯优化的变体,它在使用有信息的内核和无信息的内核之间交替。使用此伯努利备用内核,我们可以确保仿真与现实之间的差异不会妨碍在线调整机器人控制策略。所提出的方法被应用于具有挑战性的现实世界中的任务与新对象的面向任务的抓取。我们的进一步贡献是神经网络架构和培训管道,它利用模拟中抓取物体的经验来学习抓握稳定性得分。我们从带有卷积网络的标记数据集中学习任务评分,该卷积网络用于为我们的贝叶斯优化变体构造一个有信息的内核。尽管满足任务要求和物体物理特性的高度不确定性,在具有真实传感器数据的ABB Yumi机器人上进行的实验证明了我们方法的成功。

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