无人驾驶车辆群视觉-惯性距离协同定位性能分析

IF 4.4 2区 地球科学 Q1 REMOTE SENSING Drones Pub Date : 2023-10-26 DOI:10.3390/drones7110651
Jun Lai, Suyang Liu, Xiaojia Xiang, Chaoran Li, Dengqing Tang, Han Zhou
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引用次数: 1

摘要

小型无人机群是一种新兴技术,能够实现丰富的协同任务。为了解决无人机群的定位问题,利用相对测量来提高gps拒绝环境下无人机群的定位有效性和精度,合作定位(CL)得到了广泛的研究。传统CL算法除了依赖无人机间距离测量外,还需要放置锚点作为定位参考,限制了其适用性。为了实现无基础设施的群体导航系统,消费级相机和惯性装置可以提供丰富的环境信息,这些信息可以被识别为一种局部位置参考。本文旨在分析视觉-惯性距离CL的基本性能,这也是无人机规划和传感优化的常用指标,特别是在资源有限的环境下。具体而言,在Rn×SO(n)流形中构造了视觉-惯性范围CL的封闭形式Fisher信息矩阵(FIM)。通过引入等效FIM,利用FIM的稀疏性,可以有效地计算姿态估计的性能。一系列的数值模拟验证了该方法对分析CL性能的有效性。
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Performance Analysis of Visual–Inertial–Range Cooperative Localization for Unmanned Autonomous Vehicle Swarm
The swarm of small UAVs is an emerging technology that will enable abundant cooperative tasks. To tackle the positioning problem for the UAV swarm, cooperative localization (CL) has been intensively studied since it uses relative measurement to improve the positioning availability and accuracy for the swarm in GPS-denied environments. Besides relying on inter-UAV range measurement, traditional CL algorithms need to place anchors as location references, which limits their applicability. To implement an infrastructure-less swarm navigation system, a consumer-grade camera together with an inertial device can provide rich environment information, which can be recognized as a kind of local location reference. This paper aims to analyze the fundamental performance of visual–inertial–range CL, which is also a popular metric for UAV planning and sensing optimizing, especially for resource-limited environments. Specifically, a closed-form Fisher information matrix (FIM) of visual–inertial–range CL is constructed in Rn×SO(n) manifold. By introducing an equivalent FIM and utilizing of the sparsity of the FIM, the performance of pose estimation can be efficiently calculated. A series of numerical simulations validate its effectiveness for analyzing the CL performance.
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来源期刊
Drones
Drones Engineering-Aerospace Engineering
CiteScore
5.60
自引率
18.80%
发文量
331
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