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Beauty and the Beast: Optimal Methods Meet Learning for Drone Racing

机译:美女与野兽:无人机竞速的最佳方法与学习

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Autonomous micro aerial vehicles still struggle with fast and agile maneuvers, dynamic environments, imperfect sensing, and state estimation drift. Autonomous drone racing brings these challenges to the fore. Human pilots can fly a previously unseen track after a handful of practice runs. In contrast, state-of-the-art autonomous navigation algorithms require either a precise metric map of the environment or a large amount of training data collected in the track of interest. To bridge this gap, we propose an approach that can fly a new track in a previously unseen environment without a precise map or expensive data collection. Our approach represents the global track layout with coarse gate locations, which can be easily estimated from a single demonstration flight. At test time, a convolutional network predicts the poses of the closest gates along with their uncertainty. These predictions are incorporated by an extended Kalman filter to maintain optimal maximum-a-posteriori estimates of gate locations. This allows the framework to cope with misleading high-variance estimates that could stem from poor observability or lack of visible gates. Given the estimated gate poses, we use model predictive control to quickly and accurately navigate through the track. We conduct extensive experiments in the physical world, demonstrating agile and robust flight through complex and diverse previously-unseen race tracks. The presented approach was used to win the IROS 2018 Autonomous Drone Race Competition, outracing the second-placing team by a factor of two.
机译:自主微型飞行器仍在快速,敏捷的机动,动态环境,不完善的传感以及状态估计漂移方面挣扎。自主无人机赛车将这些挑战推到了前台。经过几次练习后,人类飞行员可以驾驶以前看不见的轨道。相反,最新的自主导航算法需要环境的精确度量图或在感兴趣的轨道中收集的大量训练数据。为了弥合这一差距,我们提出了一种方法,该方法可以在以前看不见的环境中进行新的跟踪,而无需精确的地图或昂贵的数据收集。我们的方法代表了具有较粗的登机口位置的全球轨道布局,可以从一次演示飞行中轻松估算出该位置。在测试时,卷积网络会预测最接近的门的姿势及其不确定性。这些预测由扩展的卡尔曼滤波器合并,以维持最佳的浇口位置的最大后验估计。这使框架能够应对可能由可观察性差或缺乏可见门而引起的误导性高方差估计。给定估计的登机口姿势,我们使用模型预测控制来快速而准确地在轨道上导航。我们在物理世界中进行了广泛的实验,展示了复杂而多样的,以前未见过的赛道的敏捷,强劲飞行。提出的方法用于赢得IROS 2018自主无人机竞赛比赛,比第二名的团队高出两倍。

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