Journal Article10.1109/lra.2021.3136286
Flexible and Resource-Efficient Multi-Robot Collaborative Visual-Inertial-Range Localization
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TL;DR: This work presents a UWB-aided multi-robot localization system that does not rely on loop closure (flexible) and only requires odometry data from neighbors (resource-efficient), and proposes a two-stage approach with a long sliding window that outperforms previous approaches as well as its individual parts.
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Abstract: In multi-robot systems, two important research problems are relative localization between the robots and global localization of all robots in a common frame. Traditional methods rely on detecting inter and intra-robot loop closures, which can be restrictive operation-wise since the robot must form loops. Ultra-wideband sensors, which provide direct distance measurements and robot ID, can replace loop closures in many applications. However, existing research on UWB-aided multi-robot state estimation often ignores the odometry drift which leads to inaccurate global position in the long run. In this work, we present a UWB-aided multi-robot localization system that does not rely on loop closure (flexible) and only requires odometry data from neighbors (resource-efficient). We propose a two-stage approach: 1) with a long sliding window, the relative transformation is refined based on range and odometry data, 2) onboard visual-inertial-range data are tightly fused in a short-term sliding window to provide more accurate local and global estimates. Simulation and real-life experiments with two quadrotors show that the system as a whole outperforms previous approaches as well as its individual parts.
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Relative Transformation Estimation Based on Fusion of Odometry and UWB Ranging Data
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Relative Transformation Estimation Based on Fusion of Odometry and UWB Ranging Data
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TL;DR: In this article , the authors study the problem of estimating the four-degree-of-freedom (3-D position and heading) robot-to-robot relative frame transformation using onboard odometry and interrobot distance measurements, and propose optimization-based solutions, including a quadratically constrained quadratic programming (QCQP) formulation and its semidefinite programming (SDP) relaxation.
Distributed Relative Localization Algorithms for Multi-Robot Networks: A Survey
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Overview of Multi-Robot Collaborative SLAM from the Perspective of Data Fusion
Weifeng Chen,Xiyang Wang,Shanping Gao,Guang Peng Shang,Chengjun Zhou,Zhenxiong Li,Chonghui Xu,Kai Hu +7 more
TL;DR: Multi-robot collaborative SLAM (VSLAM) as discussed by the authors is a current research hotspot, and relevant algorithms are being updated rapidly, which can resolve individual cost, global error accumulation, computational load, and risk concentration problems faced by single robot SLAM schemes.
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