A cloud robot system using the dexterity network and berkeley robotics and automation as a service (Brass)

ICRA(2017)

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摘要
In support of Cloud Robotics, Robotics and Automation as a Service (RAaaS) frameworks have the potential to reduce the complexity of software development, simplify software installation and maintenance, and facilitate data sharing for machine learning. In this proof-of-concept paper, we describe Berkeley Robotics and Automation as a Service (Brass), a RAaaS prototype that allows robots to access a remote server that hosts a robust grasp-planning system (Dex-Net 1.0) that maintains data on hundreds of candidate grasps on thousands of 3D object meshes and uses perturbation sampling to estimate and update a stochastic robustness metric for each grasp. Results suggest that such a system can increase grasp reliability over naive locally-computed grasping strategies with network latencies of 30 and 200 msec for servers 500 and 6000 miles away, respectively. We also study how the system can use execution reports from robots in the field to update grasp recommendations over time.
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关键词
cloud robot system,dexterity network,Berkeley robotics and automation as a service,Brass,RAaaS frameworks,software development complexity,software installation,software maintenance,data sharing,machine learning,robust grasp-planning system,Dex-Net 1.0,3D object meshes,perturbation sampling,stochastic robustness metric,grasp recommendations
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