SLAM系统里程估计中图像特征点辅助点云匹配方案

You-Cheng Zhang, Y. Hwang
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引用次数: 1

摘要

提出了一种图像特征点辅助方案,以加快激光雷达测速估计中点云匹配的速度。为了准确地计算相机在连续帧之间的位置和方向变化,必须首先识别两个激光点云之间对应的点对,这需要一个耗时的迭代过程。传统方法仅利用激光点云数据,而不利用相机图像信息来加快匹配过程。该方案首先对图像进行分析,识别特征点丰富的区域。与平面区域相比,这些区域的点云匹配效果更好。通过修剪特征点不太重要的区域,可以大大减小点的大小。这加快了过程,而不会明显损害匹配精度。我们在一个同步定位与测绘(SLAM)系统的里程估计模块中实现了该方案,并评估了该方案可能带来的性能提升。实验结果表明,在平面环境下,OE的增强效果更为显著。该算法可节省18.9%的时间,轨迹估计偏差可以忽略不计。
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An Image Feature Points Assisted Point Cloud Matching Scheme in Odometry Estimation for SLAM Systems
This paper presents an image feature points assisted scheme to accelerate the process of point cloud matching in Odometry Estimation (OE) equipped with a Lidar camera. To calculate the changes of position and orientation of a camera across successive frames accurately, the corresponding point pairs between two laser point clouds must be identified first, which calls for a time-consuming iterative process. Conventional approaches utilize the laser point cloud data only and do not leverage the information of camera image to expedite the matching process. The proposed scheme analyzes the image first to identify the regions rich of feature points. Compared to flat regions, these regions serve better in point cloud matching. The size of the point could can be largely reduced by pruning out the regions less significant in terms of feature points. This speeds up the process without noticeable compromise of the matching accuracy. We implement the scheme in the odometry estimation module of a Simultaneous Localization and Mapping (SLAM) system and evaluate possible performance enhancement from the proposed scheme. Experimental results show that the enhancement in OE is more significant in a more planar environment. the time saving can be up to 18.9% and the deviation in path trajectory estimation is negligible.
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