通过融合视觉SLAM、基于载波相位的GPS和惯性测量,实现高精度的全球参考位置和姿态

Daniel P. Shepard, T. Humphreys
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引用次数: 33

摘要

提出并分析了一种获取高精度全球参考位置和姿态的新型导航系统。该系统以基于捆绑调整的视觉同步定位和测绘(SLAM)算法为中心,该算法将载波相位差分GPS (CDGPS)位置测量数据整合到捆绑调整中,此外还测量了在相机图像子集(称为关键帧)中识别的点特征。为了实时跟踪摄像机的运动,使用了导航滤波器,该滤波器利用了所有非关键帧的点特征测量值、通过束调整估计的点特征位置和惯性测量值。仿真结果表明,该系统在室外开阔区域可获得厘米级以上的绝对定位精度和亚度级的绝对姿态精度。此外,当系统过渡到拒绝gps的环境时(例如,当导航系统在室内携带时),位置和姿态解仅随行进距离略有漂移。提出了一种初始化全局参考束平差算法的新方法,该方法解决了基于两个不同传感器的位置估计在考虑传感器之间距离的情况下关联坐标系的问题。给出了全局参考束平差算法的仿真结果,验证了该算法在没有GPS信号的走廊中行走时的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-precision globally-referenced position and attitude via a fusion of visual SLAM, carrier-phase-based GPS, and inertial measurements
A novel navigation system for obtaining high-precision globally-referenced position and attitude is presented and analyzed. The system is centered on a bundle-adjustment-based visual simultaneous localization and mapping (SLAM) algorithm which incorporates carrier-phase differential GPS (CDGPS) position measurements into the bundle adjustment in addition to measurements of point features identified in a subset of the camera images, referred to as keyframes. To track the motion of the camera in real-time, a navigation filter is employed which utilizes the point feature measurements from all non-keyframes, the point feature positions estimated by bundle adjustment, and inertial measurements. Simulations have shown that the system obtains centimeter-level or better absolute positioning accuracy and sub-degree-level absolute attitude accuracy in open outdoor areas. Moreover, the position and attitude solution only drifts slightly with the distance traveled when the system transitions to a GPS-denied environment (e.g., when the navigation system is carried indoors). A novel technique for initializing the globally-referenced bundle adjustment algorithm is also presented which solves the problem of relating the coordinate systems for position estimates based on two disparate sensors while accounting for the distance between the sensors. Simulation results are presented for the globally-referenced bundle adjustment algorithm which demonstrate its performance in the challenging scenario of walking through a hallway where GPS signals are unavailable.
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