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Deep Learning-based Cooperative Trail Following for Multi-Robot System

机译:基于深度学习的合作迹跟踪多机器人系统

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Following trails in the wild is an essential capability of out-door autonomous mobile robots. Recently, deep learning-based approaches have made great advancements in this field. However, the existing research only focuses on the trail following with a single robot. In contrast, many robotic tasks in the reality, such as search and patrolling, are conducted by a group of robots. While these robots are grouped to move in the wild, they can cooperate to significantly promote the trail following accuracy, for example, by sharing images of different view angles or real-time decision fusion. This paper proposes such an approach named DL-Cooper that enables multi-robot vision-based trail following based on deep learning algorithms. It allows each robot to make a decision respectively with deep neural network and then fusion the decisions on the collective level with the support of back-end cloud computing infrastructure. It also takes Quality of Service (QoS) assurance, a very essential property of robotic software, into consideration. By limiting the condition to fusion decisions, the time latency can be minimally sacrificed. Experiments on the real-world dataset show that our approach has significantly improved the accuracy of the single-robot system.
机译:野外追踪是外门自主移动机器人的基本能力。最近,基于深入的学习方法在这一领域取得了很大的进步。然而,现有的研究仅重点侧面以单个机器人关注。相比之下,现实中的许多机器人任务(例如搜索和巡逻)由一组机器人进行。虽然这些机器人被分组以在野外移动,但它们可以协作以显着促进以下准确性,例如,通过共享不同视角或实时决策融合的图像。本文提出了一种名为DL-Cooper的方法,该方法可以基于深度学习算法实现基于多机器人视觉的路径。它允许每个机器人分别与深神经网络分别做出决定,然后利用后端云计算基础设施的支持融合了集体级别的决策。考虑到,它还需要服务质量(QoS)保证,这是机器人软件的一个非常重要的财产。通过将条件限制为融合决策,可以最小地牺牲时间延迟。实验对现实世界数据集表明,我们的方法显着提高了单机器人系统的准确性。

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