基于摄像头的自主无人机编队飞行定位

Z. Mahboubi, Zico Kolter, Tao Wang, G. Bower
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引用次数: 40

摘要

本文研究了多架密集编队飞行的无人或自主飞行器的精确空中定位问题。本文描述了我们使用两架小型无人机的实验设置和定位算法的细节。该算法在两架翼展约为2米的低成本电动遥控飞机上实现。我们的控制软件在机载x86 CPU上运行,使用LQG控制(LQR控制器与EKF状态估计器耦合)和线性化状态空间模型来控制两架飞机飞行同步圈。除了控制系统外,领头的飞机还配备了一种已知的高强度LED灯。尾随飞机用摄像头捕捉这些led的图像,并使用正交迭代计算机视觉算法以25Hz的频率确定尾随飞机相对于领头飞机的相对位置和方向。整个过程都是实时进行的,两辆车都是自主飞行的。我们注意到基于摄像机的系统用于定位,但尚未用于闭环控制。虽然,由于飞行测试期间没有地面真实定位数据,因此很难对空中定位系统的误差进行绝对量化,但我们的仿真结果分析和室内测量表明,当无人机相隔约10米(5跨)时,我们可以实现10厘米(5%翼展)左右的定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Camera Based Localization for Autonomous UAV Formation Flight
This work considers the task of accurate in-air localization for multiple unmanned or autonomous aerial vehicles flying in close formation. The paper describes our experimental setup using two small UAVs and the details of the localization algorithm. The algorithm was implemented on two low-cost, electric powered, remote control aircraft with wing spans of approximately 2 meters. Our control software, running on an onboard x86 CPU, uses LQG control (an LQR controller coupled with an EKF state estimator) and a linearized state space model to control both aircraft to fly synchronized circles. In addition to its control system, the lead aircraft is outfitted with a known pattern of high-intensity LED lights. The trailing aircraft captures images of these LEDs with a camera and uses the Orthogonal Iteration computer vision algorithm to determine the relative position and orientation of the trailing aircraft with respect to the lead aircraft at 25Hz. The entire process is carried-out in real-time with both vehicles flying autonomously. We note that the camera based system is used for localization, but not yet for closed-loop control. Although, an absolute quantification of the error for the in-air localization system is difficult as we do not have ground truth positioning data during flight testing, our simulation results analysis and indoor measurements suggest that we can achieve localization accuracy on the order of 10 cm (5% wingspan) when the UAVs are separated by a distance of about 10 meters (5 spans).
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