Robust Task-Based Grasping as a Service

Jingyi Song, A. Tanwani, Jeffrey Ichnowski, Michael Danielczuk, Kate Sanders, Jackson Chui, J. A. Ojea, Ken Goldberg
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引用次数: 4

Abstract

Robot grasping for automation must be robust to the inherent uncertainty in perception, control, and physical properties such as friction. Computing robust grasp points on a given object is even more challenging when there are constraints due to a task intended to be performed with the object, for example in assembly, packing, and/or tool use. To compute grasps that robustly achieve task requirements, we designed an intuitive user interface that takes an object mesh as input and displays it, allowing non-specialists to indicate “stay-out” zones by painting facets of the mesh and to indicate desired forces and torques by drawing vectors. The interface then sends this specification to our server which computes resulting grasps and send them back to the client where the resulting parallel-jaw grasp axes are displayed color-coded by robustness. We implemented this interface in the cloud-based “Dex-Net as a Service-Task (DNaaS-Task)” system that runs on any browser and reports examples. The system is available at: https://dex-net.app
健壮的基于任务的抓取即服务
为了实现自动化,机器人抓取必须对感知、控制和摩擦等物理特性的固有不确定性具有鲁棒性。在给定对象上计算健壮的抓点甚至更具挑战性,因为要与对象一起执行的任务有限制,例如在装配、包装和/或工具使用中。为了计算健壮地实现任务要求的抓取,我们设计了一个直观的用户界面,将对象网格作为输入并显示它,允许非专业人员通过绘制网格的面来指示“停留”区域,并通过绘制矢量来指示所需的力和扭矩。然后,接口将此规范发送给我们的服务器,服务器计算产生的抓取并将其发送回客户端,由此产生的平行颚抓取轴通过鲁棒性显示颜色编码。我们在基于云的“Dex-Net即服务任务(DNaaS-Task)”系统中实现了这个接口,该系统可以在任何浏览器上运行并报告示例。该系统可在https://dex-net.app上获得
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