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A Fog Robotics Approach to Deep Robot Learning: Application to Object Recognition and Grasp Planning in Surface Decluttering

机译:一种用于深度机器人学习的雾机器人技术:在表面去绒中的对象识别和把握计划中的应用

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The growing demand of industrial, automotive and service robots presents a challenge to the centralized Cloud Robotics model in terms of privacy, security, latency, bandwidth, and reliability. In this paper, we present a `Fog Robotics' approach to deep robot learning that distributes compute, storage and networking resources between the Cloud and the Edge in a federated manner. Deep models are trained on non-private (public) synthetic images in the Cloud; the models are adapted to the private real images of the environment at the Edge within a trusted network and subsequently, deployed as a service for low-latency and secure inference/prediction for other robots in the network. We apply this approach to surface decluttering, where a mobile robot picks and sorts objects from a cluttered floor by learning a deep object recognition and a grasp planning model. Experiments suggest that Fog Robotics can improve performance by sim-to-real domain adaptation in comparison to exclusively using Cloud or Edge resources, while reducing the inference cycle time by 4× to successfully declutter 86% of objects over 213 attempts.
机译:工业,汽车和服务机器人的需求不断增长,在隐私,安全性,延迟,带宽和可靠性方面,对集中式云机器人模型提出了挑战。在本文中,我们为深度机器人学习提供了一种“雾机器人”方法,该方法以联合方式在云和边缘之间分配计算,存储和网络资源。深度模型在云中的非私有(公共)合成图像上进行训练;这些模型适用于受信任网络中边缘处环境的私有真实映像,随后被部署为低延迟服务,并为网络中的其他机器人提供安全的推断/预测服务。我们将这种方法应用于表面整理,其中移动机器人通过学习深度的对象识别和抓取规划模型来从混乱的地板上拾取和分类对象。实验表明,与仅使用Cloud或Edge资源相比,Fog Robotics通过模拟到真实的域自适应可以提高性能,同时将推理周期时间减少4倍,从而在213次尝试中成功整理了86%的对象。

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