Vetrella Amedeo Rodi, Fasano Giancarmine, Accardo Domenico, Moccia Antonio
Department of Industrial Engineering, University of Naples Federico II, Piazzale Tecchio 80, Naples 80125, Italy.
Sensors (Basel). 2016 Dec 17;16(12):2164. doi: 10.3390/s16122164.
Autonomous navigation of micro-UAVs is typically based on the integration of low cost Global Navigation Satellite System (GNSS) receivers and Micro-Electro-Mechanical Systems (MEMS)-based inertial and magnetic sensors to stabilize and control the flight. The resulting navigation performance in terms of position and attitude accuracy may not suffice for other mission needs, such as the ones relevant to fine sensor pointing. In this framework, this paper presents a cooperative UAV navigation algorithm that allows a chief vehicle, equipped with inertial and magnetic sensors, a Global Positioning System (GPS) receiver, and a vision system, to improve its navigation performance (in real time or in the post processing phase) exploiting formation flying deputy vehicles equipped with GPS receivers. The focus is set on outdoor environments and the key concept is to exploit differential GPS among vehicles and vision-based tracking (DGPS/Vision) to build a virtual additional navigation sensor whose information is then integrated in a sensor fusion algorithm based on an Extended Kalman Filter. The developed concept and processing architecture are described, with a focus on DGPS/Vision attitude determination algorithm. Performance assessment is carried out on the basis of both numerical simulations and flight tests. In the latter ones, navigation estimates derived from the DGPS/Vision approach are compared with those provided by the onboard autopilot system of a customized quadrotor. The analysis shows the potential of the developed approach, mainly deriving from the possibility to exploit magnetic- and inertial-independent accurate attitude information.
微型无人机的自主导航通常基于低成本全球导航卫星系统(GNSS)接收器与基于微机电系统(MEMS)的惯性和磁传感器的集成,以稳定和控制飞行。在位置和姿态精度方面所获得的导航性能可能无法满足其他任务需求,例如与精确传感器指向相关的需求。在此框架下,本文提出了一种协同无人机导航算法,该算法允许配备惯性和磁传感器、全球定位系统(GPS)接收器以及视觉系统的主飞行器,利用配备GPS接收器的编队飞行副飞行器来提高其导航性能(实时或在后处理阶段)。重点关注室外环境,关键概念是利用车辆间的差分GPS和基于视觉的跟踪(DGPS/视觉)来构建一个虚拟的附加导航传感器,其信息随后被集成到基于扩展卡尔曼滤波器的传感器融合算法中。描述了所开发的概念和处理架构,重点是DGPS/视觉姿态确定算法。基于数值模拟和飞行测试进行了性能评估。在飞行测试中,将从DGPS/视觉方法得出的导航估计与定制四旋翼飞行器的机载自动驾驶系统提供的估计进行了比较。分析表明了所开发方法的潜力,主要源于利用与磁和惯性无关的精确姿态信息的可能性。