Federated Learning for Vision-based Obstacle Avoidance in the Internet of Robotic Things

Xianjia Yu, J. P. Queralta, Tomi Westerlund
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引用次数: 4

Abstract

Deep learning methods have revolutionized mobile robotics, from advanced perception models for an enhanced situational awareness to novel control approaches through re-inforcement learning. This paper explores the potential of federated learning for distributed systems of mobile robots enabling collaboration on the Internet of Robotic Things. To demonstrate the effectiveness of such an approach, we deploy wheeled robots in different indoor environments. We analyze the performance of a federated learning approach and compare it to a traditional centralized training process with a priori aggregated data. We show the benefits of collaborative learning across heterogeneous environments and the potential for sim-to-real knowledge transfer. Our results demonstrate significant performance benefits of FL and sim-to-real transfer for vision-based navigation, in addition to the inherent privacy-preserving nature of FL by keeping computation at the edge. This is, to the best of our knowledge, the first work to leverage FL for vision-based navigation that also tests results in real-world settings.
机器人物联网中基于视觉的避障联合学习
深度学习方法已经彻底改变了移动机器人,从增强态势感知的高级感知模型到通过强化学习的新型控制方法。本文探讨了移动机器人分布式系统联合学习的潜力,实现了机器人物联网上的协作。为了证明这种方法的有效性,我们在不同的室内环境中部署轮式机器人。我们分析了联邦学习方法的性能,并将其与具有先验聚合数据的传统集中式训练过程进行了比较。我们展示了跨异构环境的协作学习的好处,以及从模拟到真实知识转移的潜力。我们的研究结果表明,在基于视觉的导航中,FL和模拟到真实的传输具有显著的性能优势,此外,FL通过保持边缘计算而具有固有的隐私保护特性。据我们所知,这是第一个利用FL进行基于视觉的导航的工作,也可以在现实环境中测试结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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