An efficient distributed data correspondence scheme for multi-robot relative localization

O. de Silva, G. Mann, R. Gosine
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Abstract

This research addresses the problem of relative localization within a robot network possessing relative measurements between robots. The problem of correspondence is inherent to most multi-robot relative sensing methods, such as LiDAR, RADAR and vision based solutions. Multi-sensor multi-target tracking approaches addresses the problem of correspondence, when good prioris for initial poses of the sensing platforms are assumed. However the multi-robot relative localization problem differs from the classical multi-target tracking scenario due to; a) the unavailability of initial poses of sensing platforms, b) the existence of mutual measurements between the sensing platforms, and c) the measurement set being mixed with both known and unknown correspondences. To address these specific characteristics of multi-robot systems, this study proposes a distributed data correspondence architecture which performs multi-hypothesis estimation of the robot states. The proposed architecture is implemented on a multi-robot relative sensor configuration which possess range measurements with known data correspondence and bearing measurements with unknown data correspondence. The proposed distributed multi-robot localization method is capable of addressing measurement correspondence, noise, and measurement clutter effectively, while possessing inherent initialization and recovery capability from unknown poses.
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一种高效的多机器人相对定位分布式数据通信方案
本研究解决了具有机器人间相对测量值的机器人网络中的相对定位问题。对应问题是大多数多机器人相对传感方法所固有的,例如基于激光雷达、雷达和视觉的解决方案。多传感器多目标跟踪方法解决了感知平台初始姿态具有良好优先级时的对应问题。然而,多机器人相对定位问题不同于经典的多目标跟踪场景。A)传感平台的初始位姿不可用,b)传感平台之间存在相互测量,c)测量集混合了已知和未知对应。为了解决多机器人系统的这些特定特征,本研究提出了一种分布式数据对应架构,该架构对机器人状态进行多假设估计。该结构在具有已知对应数据的距离测量和未知对应数据的方位测量的多机器人相对传感器结构上实现。所提出的分布式多机器人定位方法能够有效地解决测量对应、噪声和测量杂波问题,同时具有固有的未知位姿初始化和恢复能力。
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