With monocular Visual-Inertial Odometry (VIO) system, 3D point cloud and camera motion can be estimated simultaneously. Because pure sparse 3D points provide a structureless representation of the environment, generating 3D mesh from sparse points can further model the environment topology and produce dense mapping. To improve the accuracy of 3D mesh generation and localization, we propose a tightly-coupled monocular VIO system, PLP-VIO, which exploits point features and line features as well as plane regularities. The co-planarity constraints are used to leverage additional structure information for the more accurate estimation of 3D points and spatial lines in state estimator. To detect plane and 3D mesh robustly, we combine both the line features with point features in the detection method. The effectiveness of the proposed method is verified on both synthetic data and public datasets and is compared with other state-of-the-art algorithms.
翻译:由于纯稀疏的三维点点和摄像运动提供了无结构的环境代表,从稀疏点生成的三维网格可以进一步模拟环境地形,并产生密集的绘图。为了提高3D网格生成和本地化的准确性,我们提议采用一个紧凑的单立点光线光谱(PLP-VIO)系统(PLP-VIO),该系统利用点特征和线条特征以及平面规律。共同计划性限制被用来利用更多的结构信息来更准确地估计州测算仪中的三维点和空间线。要强有力地探测平面和3D网格,我们将线特征与探测方法中的点特征结合起来。拟议方法的有效性在合成数据和公共数据集上得到验证,并与其他最先进的算法进行比较。