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Fast and Robust Monocular Visua-Inertial Odometry Using Points and Lines

机译:使用点和线的快速和鲁棒的单眼可见惯性里程表

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摘要

When the camera moves quickly and the image is blurred or the texture in the scene is missing, the Simultaneous Localization and Mapping (SLAM) algorithm based on point feature experiences difficulty tracking enough effective feature points, and the positioning accuracy and robustness are poor, and even may not work properly. For this problem, we propose a monocular visual odometry algorithm based on the point and line features and combining IMU measurement data. Based on this, an environmental-feature map with geometric information is constructed, and the IMU measurement data is incorporated to provide prior and scale information for the visual localization algorithm. Then, the initial pose estimation is obtained based on the motion estimation of the sparse image alignment, and the feature alignment is further performed to obtain the sub-pixel level feature correlation. Finally, more accurate poses and 3D landmarks are obtained by minimizing the re-projection errors of local map points and lines. The experimental results on EuRoC public datasets show that the proposed algorithm outperforms the Open Keyframe-based Visual-Inertial SLAM (OKVIS-mono) algorithm and Oriented FAST and Rotated BRIEF-SLAM (ORB-SLAM) algorithm, which demonstrates the accuracy and speed of the algorithm.
机译:当相机快速移动且图像模糊或场景中的纹理缺失时,基于点特征的同时定位和映射(SLAM)算法将难以跟踪足够的有效特征点,并且定位精度和鲁棒性很差,并且甚至可能无法正常工作。针对此问题,我们提出了一种基于点和线特征并结合IMU测量数据的单眼视觉测距算法。基于此,构建具有几何信息的环境特征图,并合并IMU测量数据以为视觉定位算法提供先验和比例信息。然后,基于稀疏图像对准的运动估计获得初始姿势估计,并且进一步执行特征对准以获得子像素级特征相关性。最后,通过最小化局部地图点和线的重新投影误差,可以获得更准确的姿势和3D地标。在EuRoC公共数据集上的实验结果表明,该算法优于基于开放关键帧的视觉惯性SLAM(OKVIS-mono)算法和定向FAST和旋转的Brief-SLAM(ORB-SLAM)算法,证明了该算法的准确性和速度。算法。

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