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Toward Autonomous Rotorcraft Flight in Degraded Visual Environments: Experiments and Lessons Learned

机译:在退化的视觉环境中实现自主旋翼飞机飞行:实验和经验教训

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Unmanned cargo delivery to combat outposts will inevitably involve operations in degraded visual environments (DVE). When DVE occurs, the aircraft autonomy system needs to be able to function regardless of the obscurant level. In 2014, Near Earth Autonomy established a baseline perception system for autonomous rotorcraft operating in clear air conditions, when its m3 sensor suite and perception software enabled autonomous, no-hover landings onto unprepared sites populated with obstacles. The m3's long-range lidar scanned the helicopter's path and the perception software detected obstacles and found safe locations for the helicopter to land. This paper presents the results of initial tests with the Near Earth perception system in a variety of DVE conditions and analyzes them from the perspective of mission performance and risk. Tests were conducted with the m3's lidar and a lightweight synthetic aperture radar in rain, smoke, snow, and controlled brownout experiments. These experiments showed the capability to penetrate through mild DVE but the perceptual capabilities became degraded with the densest brownouts. The results highlight the need for not only improved ability to see through DVE, but also for improved algorithms to monitor and report DVE conditions.
机译:无人运送货物以打击前哨站将不可避免地涉及在退化的视觉环境(DVE)中进行的操作。当发生DVE时,飞机的自主系统需要能够运行,而不管遮挡剂的水平如何。 2014年,Near Earth Autonomy建立了用于在晴朗的空气条件下运行的自主旋翼飞机的基准感知系统,当时其m3传感器套件和感知软件可将自主,无悬停着陆到没有障碍物的未准备好地点。 m3的远程激光雷达扫描了直升机的路径,感知软件检测到障碍物并找到了安全的着陆位置。本文介绍了在各种DVE条件下使用近地感知系统进行初始测试的结果,并从任务执行和风险的角度对这些结果进行了分析。使用m3的激光雷达和轻型合成孔径雷达在雨,烟,雪和受控节电实验中进行了测试。这些实验显示了穿透轻度DVE的能力,但是感知能力随着最密集的电力不足而降低。结果表明,不仅需要提高对DVE的透视能力,而且还需要改进的算法来监视和报告DVE状况。

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