Tightly-Coupled Perception and Navigation of Heterogeneous Land-Air Robots in Complex Scenarios

Yufeng Yue, Mingxing Wen, Yosmar Putra, Meiling Wang, Danwei W. Wang
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引用次数: 3

Abstract

In unstructured and unknown environments, heterogeneous robots must be able to perceive the environment, coordinate with each other and complete tasks collaboratively with onboard sensors. In this paper, a tightly-coupled perception and navigation framework is proposed for heterogeneous land-air robots, which forms a closed loop of perception-navigation for heterogeneous robots. The key novelty of this work is the proposing of a unified framework to formulate the cooperative mapping and navigation problem, as well as the derivation of high-level coordination strategy and low-level goal-oriented navigation within a fully integrated approach. To provide a comprehensive understanding of the environment, a flexible probabilistic map fusion algorithm is applied to merge local maps generated by hybrid robots. The proposed UAV-UGV hybrid system is validated in challenging experiments, proving its robustness and effectiveness in practical tasks.
复杂场景下异质陆空机器人的紧密耦合感知与导航
在非结构化和未知环境中,异构机器人必须能够感知环境,相互协调,并与机载传感器协同完成任务。提出了一种异构陆空机器人感知与导航紧密耦合的框架,形成了异构陆空机器人感知与导航的闭环。本工作的关键新颖之处在于提出了一个统一的框架来制定协同映射和导航问题,以及在完全集成的方法下推导高层协调策略和低层目标导向导航。为了提供对环境的全面理解,采用了一种灵活的概率地图融合算法来合并混合机器人生成的局部地图。实验验证了所提出的UAV-UGV混合系统的鲁棒性和有效性。
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