自主MAV的多用途分布式姿态估计和传感器自校准

S. Weiss, Markus Achtelik, M. Chli, R. Siegwart
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引用次数: 140

摘要

在本文中,我们提出了一个通用框架,以实现微型飞行器(MAV)的自主飞行,该飞行器只有缓慢,嘈杂,延迟和可能任意缩放的测量可用。使用这种测量直接的位置控制实际上是不可能的,因为MAVs在运动中表现出极大的灵活性。此外,这些测量通常来自不同的机载传感器,因此准确的校准对估计过程的鲁棒性至关重要。在这里,我们使用EKF公式来解决这些问题,该公式将这些测量与惯性传感器融合在一起。我们不仅估计了MAV的姿态和速度,还实时估计了传感器偏差、位置测量尺度和自(传感器间)校准。此外,我们还表明,仅从位置测量中获得偏航估计是可能的。我们证明了所提出的框架能够完全运行在以1khz速率执行状态预测的MAV上。我们的研究结果表明,这种方法能够处理测量延迟(高达500ms),噪声(标准偏差高达20 cm)和缓慢的更新速率(低至1 Hz),同时仍然可能进行动态操作。我们在不同干扰参数和不同传感器设置的影响下对实际系统进行了详细的定量性能评估,以突出我们方法的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Versatile distributed pose estimation and sensor self-calibration for an autonomous MAV
In this paper, we present a versatile framework to enable autonomous flights of a Micro Aerial Vehicle (MAV) which has only slow, noisy, delayed and possibly arbitrarily scaled measurements available. Using such measurements directly for position control would be practically impossible as MAVs exhibit great agility in motion. In addition, these measurements often come from a selection of different onboard sensors, hence accurate calibration is crucial to the robustness of the estimation processes. Here, we address these problems using an EKF formulation which fuses these measurements with inertial sensors. We do not only estimate pose and velocity of the MAV, but also estimate sensor biases, scale of the position measurement and self (inter-sensor) calibration in real-time. Furthermore, we show that it is possible to obtain a yaw estimate from position measurements only. We demonstrate that the proposed framework is capable of running entirely onboard a MAV performing state prediction at the rate of 1 kHz. Our results illustrate that this approach is able to handle measurement delays (up to 500ms), noise (std. deviation up to 20 cm) and slow update rates (as low as 1 Hz) while dynamic maneuvers are still possible. We present a detailed quantitative performance evaluation of the real system under the influence of different disturbance parameters and different sensor setups to highlight the versatility of our approach.
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