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Model-Based Global Localization for Aerial Robots Using Edge Alignment

机译:基于模型的航空机器人基于模型的全局定位

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摘要

Robust state estimation is the core capability for autonomous aerial robots operating in complex environments. Global navigation satellite system and visual odometry/SLAM are popular methods for state estimation. However, there exist scenarios, such as when flying between tall buildings or in the middle of deep canyons, that all these methods fail due to obstructed sky view and high altitude. in this letter, inspired by the fact that offline-generated three-dimensional (3-D) models of cities and natural scenes are readily available, we propose a global localization method for aerial robots by using 3-D models and measurements from a monocular fisheye camera and an inertial measurement unit (IMU). Due to the fact that 3-D models are generated by different cameras at different times, traditional feature-based or direct registration methods usually fail to perform, we therefore propose to use an edge alignment-based method for image-to-model registration under strong changes in lighting conditions and camera characteristics. We additionally aid our model-based localization with electronic image stabilization for better tracking performance, and extended Kalman filter (EKF)-based sensor fusion for closed-loop control. Our method runs onboard an embedded computer in real time. We verify both local accuracy and global consistency of the proposed approach in real-world experiments with comparisons against ground truth. We also show closed-loop control using the proposed method as state feedback.
机译:鲁棒的状态估计是在复杂环境中运行的自主飞行机器人的核心能力。全球导航卫星系统和视觉里程计/ SLAM是用于状态估计的流行方法。但是,存在一些情况,例如在较高的建筑物之间飞行或在深峡谷的中间飞行时,所有这些方法都会由于天空视线受阻和高海拔而失败。在这封信中,受到以下事实的启发:离线生成的城市和自然风光的三维(3-D)模型很容易获得,我们通过使用3-D模型和单眼的测量结果,为航空机器人提出了一种全球定位方法鱼眼镜头和惯性测量单元(IMU)。由于不同相机在不同时间生成3-D模型的事实,传统的基于特征或直接配准的方法通常无法执行,因此,我们建议使用基于边缘对齐的方法进行图像到模型的配准。照明条件和相机特性的强烈变化。此外,我们还通过基于电子防抖的模型定位来提高跟踪性能,并基于扩展卡尔曼滤波器(EKF)的传感器融合来进行闭环控制。我们的方法在嵌入式计算机上实时运行。我们通过与地面真实性的比较,验证了在实际实验中该方法的局部精度和全局一致性。我们还展示了使用所提出的方法作为状态反馈的闭环控制。

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