无人驾驶飞行器的实时跨视角图像匹配和相机姿态确定

Long Chen, Bo Wu, Ran Duan, Zeyu Chen
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引用次数: 0

摘要

在没有全球导航卫星系统(GNSS)的环境中,基于视觉的方法通常用于空中机器人的定位和导航。然而,传统方法往往存在随时间累积的估计误差,导致轨迹漂移,缺乏实时性,尤其是在大规模场景中。本文介绍了新颖的方法,包括基于特征的跨视角图像匹配以及视觉里程测量与摄影测量空间切除的整合,用于实时确定相机姿态。利用真实无人机数据集进行的实验评估表明,所提出的方法能可靠地匹配空间分辨率、覆盖范围和透视图差异较大的跨视图像中的特征,绝对位置误差的均方根误差为 4.7 米,旋转误差为 0.33°,在无人机上的轻型边缘设备中实现时,实时性能达到每秒 12 帧(FPS)。这种方法为基于实时反馈控制的无人机在全球导航卫星系统缺失环境中的多样化智能应用提供了潜力。
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Real-Time Cross-View Image Matching and Camera Pose Determination for Unmanned Aerial Vehicles
In global navigation satellite systems (GNSS)-denied environments, vision-based methods are commonly used for the positioning and navigation of aerial robots. However, traditional methods often suffer from accumulative estimation errors over time, leading to trajectory drift and lack real-time performance, particularly in large-scale scenarios. This article presents novel approaches, including feature-based cross-view image matching and the integration of visual odometry and photogrammetric space resection for camera pose determination in real-time. Experimental evaluation with real UAV datasets demonstrated that the proposed method reliably matches features in cross-view images with large differences in spatial resolution, coverage, and perspective views, achieving a root-mean-square error of 4.7 m for absolute position error and 0.33° for rotation error, and delivering real-time performance of 12 frames per second (FPS) when implemented in a lightweight edge device onboard UAV. This approach offters potential for diverse intelligent UAV applications in GNSS-denied environments based on real-time feedback control.
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