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Marker-based tracking with unmanned aerial vehicles

机译:基于标记的无人空中车辆跟踪

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With the availability of low-cost micro aerial vehicles (MAVs), unmanned aerial vehicles (UAVs) quickly gain popularity and application potential. This requires techniques that can be understood by non-experts and flexibly applied for rapid prototyping. Visual tracking is an essential task with many applications, such as autonomous navigation and scene acquisition. While marker-less methods emerge, marker-based methods still have major advantages including simplicity, robustness, accuracy and performance. In practice, however, multi-marker setups introduce complexity and calibration efforts that can void the advantages. This work proposes a solution for practical, robust and easy-to-use marker-based tracking with independent compound targets. We introduce two novel target designs and describe pose estimation, noise removal and geometric transformations. The concepts are implemented in a tracking library for the Parrot AR. Drone 2.0. We explain its video access and camera calibration, and provide a first set of intrinsic parameters, jointly estimated from 14 units with high accuracy and low variance. The library is applied in a one-day contest on automatic visual navigation of UAVs, where students without technical background and programming skills achieved learning by experience and rapid development. This shows the effectiveness of combining capability with simplicity, and provides a case study on robotics in interdisciplinary education.
机译:随着低成本的微空中飞行器(MAV),无人驾驶飞行器(无人机)迅速获得普及和应用潜力。这需要通过非专家可以理解的技术并灵活地应用于快速原型设计。视觉跟踪是具有许多应用程序的重要任务,例如自主导航和场景采集。虽然标记的方法出现,但基于标记的方法仍然具有重要优点,包括简单,鲁棒性,准确性和性能。然而,在实践中,多标记设置引入了可以空效的复杂性和校准工作。这项工作提出了一种用独立化合物靶标的实用,坚固且易于使用的基于标记的跟踪解决方案。我们介绍了两种新颖的目标设计,并描述了姿势估计,噪声去除和几何变换。该概念在鹦鹉AR的跟踪库中实现。无人机2.0。我们解释了其视频访问和相机校准,并提供了第一组内在参数,从14个单位共同估计,具有高精度和低方差。图书馆适用于一天关于无人机的自动视觉导航的一日大会,其中学生没有技术背景和编程技巧,通过经验和快速发展实现了学习。这表明了以简单性结合能力的有效性,并为跨学科教育提供了机器人的案例研究。

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