使用深度学习的特定任务抓取的可视性检测

Mia Kokic, J. A. Stork, Joshua A. Haustein, D. Kragic
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引用次数: 77

摘要

在本文中,我们利用可视性的概念来建模任务、对象和抓取之间的关系,以解决特定任务的机器人抓取问题。我们使用卷积神经网络来编码和检测物体的可视性、类和方向,我们利用这些信息来制定抓取约束。我们的方法适用于一组固定的类中以前看不见的对象,并有助于推断对象提供哪些任务以及如何为该任务掌握它。我们评估了全视图和部分视图合成数据上的可视性检测,并计算了属于十个不同类别的对象的特定任务把握,并提供了五个不同的任务。我们通过使用基于优化的抓取计划器来计算特定任务的抓取来证明我们方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Affordance detection for task-specific grasping using deep learning
In this paper we utilize the notion of affordances to model relations between task, object and a grasp to address the problem of task-specific robotic grasping. We use convolutional neural networks for encoding and detecting object affordances, class and orientation, which we utilize to formulate grasp constraints. Our approach applies to previously unseen objects from a fixed set of classes and facilitates reasoning about which tasks an object affords and how to grasp it for that task. We evaluate affordance detection on full-view and partial-view synthetic data and compute task-specific grasps for objects that belong to ten different classes and afford five different tasks. We demonstrate the feasibility of our approach by employing an optimization-based grasp planner to compute task-specific grasps.
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