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首页> 外文期刊>Journal of Field Robotics >Shared Environment Representation for a Human-Robot Team Performing Information Fusion
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Shared Environment Representation for a Human-Robot Team Performing Information Fusion

机译:机器人团队执行信息融合的共享环境表示

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摘要

This paper addresses the problem of building a shared environment representation by a human-robot team. Rich environment models are required in real applications for both autonomous operation of robots and to support human decision-making. Two probabilistic models are used to describe outdoor environment features such as trees: geometric (position in the world) and visual. The visual representation is used to improve data association and to classify features. Both models are able to incorporate observations from robotic platforms and human operators. Physically, humans and robots form a heterogeneous sensor network. In our experiments, the human-robot team consists of an unmanned air vehicle, a ground vehicle, and two human operators. They are deployed for an information gathering task and perform information fusion cooperatively. All aspects of the system including the fusion algorithms are fully decentralized. Experimental results are presented in form of the acquired multi-attribute feature map, information exchange patterns demonstrating human-robot information fusion, and quantitative model evaluation. Learned lessons from deploying the system in the field are also presented.
机译:本文解决了由人类机器人团队构建共享环境表示形式的问题。在实际应用中,需要丰富的环境模型,以实现机器人的自主操作并支持人类决策。两种概率模型用于描述室外环境特征(例如树木):几何(在世界上的位置)和视觉。视觉表示用于改善数据关联和对功能进行分类。两种模型都能够合并来自机器人平台和人工操作员的观察结果。从物理上讲,人类和机器人形成了异构的传感器网络。在我们的实验中,人类机器人团队由无人飞行器,地面飞行器和两名人类操作员组成。它们被部署用于信息收集任务,并协同执行信息融合。包括融合算法在内的系统的所有方面均已完全分散。实验结果以获取的多属性特征图,展示人机信息融合的信息交换模式以及定量模型评估的形式呈现。还介绍了在现场部署系统的经验教训。

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