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Aerial-Ground Robots Collaborative 3D Mapping in GNSS-Denied Environments

Yufeng Yue, Chunyang Zhao, Yuanzhe Wang, Yi Yang, Danwei Wang

Year
2022
Citations
10

Abstract

Collaborative heterogeneous robots are expected to perform comprehensive perception, mapping and coordination in search and rescue scenarios. The challenge of collaboration between heterogeneous robots lies in their huge differences in perception, mobility and processing capabilities. In this paper, a novel collaborative UAV-UGV mapping framework is proposed in GNSS-denied and unknown environments. The key novelty of this work is the proposing of a unified framework to formulate the UAV-UGV collaborative mapping problem with a continuous-discrete model, as well as its realization in real robotic systems. In order to project continuous space into discrete space, a novel information gain trigger scheme is pro-posed. The continuous space allows each robot to perform high frequency local map estimation, while discrete space describes the problem of multi-resolution hybrid map fusion. Considering the nature of data heterogeneity, a flexible probabilistic fusion algorithm is proposed that addresses the multi-resolution hybrid map fusion problem, where the local maps generated by UAV and UGV are fused based on Bayesian rule. The proposed UAV-UGV hybrid system is validated in various challenging scenarios, demonstrating its accuracy and utility in practical tasks.

Keywords

GNSS applicationsComputer scienceRobotArtificial intelligenceSensor fusionProbabilistic logicUnmanned ground vehicleSimultaneous localization and mappingKey (lock)Real-time computing

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