Monocular inertial indoor location algorithm considering point and line features

Ju Huo, Liang Wei, Chuwei Mao
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Abstract

Compared with point features, line features in the environment have more structural information. When indoor texture is not rich, making full use of the structural information of line features can improve the robustness and accuracy of simultaneous location and mapping algorithm. In this paper, we propose an improved monocular inertial indoor location algorithm considering point and line features. Firstly, the point features and line features in the environment are extracted, matched and parameterized, and then the inertial sensor is used to estimate the initial pose, and the tightly coupled method is adopted to optimize the observation error of the point and line features and the measurement error of the inertial sensor simultaneously in the back optimization to achieve accurate estimation of the pose of unmanned aerial vehicle. Finally, loop closure detection and pose graph optimization are used to optimize the pose in real time. The test results on public datasets show that the location accuracy of the proposed method is superior to 10 cm under sufficient light and texture conditions. The angle measurement accuracy is better than 0.05 rad, and the output frequency of positioning results is 10Hz, which effectively improves the accuracy of traditional visual inertial location method and meets the requirements of real-time.
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考虑点线特征的单目惯性室内定位算法
与点特征相比,环境中的线特征具有更多的结构信息。在室内纹理不丰富的情况下,充分利用线特征的结构信息,可以提高同时定位和映射算法的鲁棒性和准确性。本文提出了一种考虑点和线特征的改进单目惯性室内定位算法。首先对环境中的点特征和线特征进行提取、匹配和参数化,然后利用惯性传感器进行初始位姿估计,并采用紧耦合的方法对点特征和线特征的观测误差和惯性传感器的测量误差同时进行优化,实现对无人机位姿的精确估计。最后,利用闭环检测和姿态图优化对姿态进行实时优化。在公共数据集上的测试结果表明,在充足的光照和纹理条件下,该方法的定位精度优于10 cm。角度测量精度优于0.05 rad,定位结果输出频率为10Hz,有效提高了传统视觉惯性定位方法的精度,满足实时性要求。
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