Title :
Monocular Camera Trajectory Optimization using LiDAR data
Author :
Bodensteiner, C. ; Hübner, W. ; Jüngling, K. ; Solbrig, P. ; Arens, M.
Abstract :
A well known problem in computer vision and photogrammetry is the precise online mapping of the surrounding scenery. Due to the nature of single projective sensor configurations with inherent 7-DoF, error accumulation and scale drift is still a problem for vision based systems. This is especially relevant for difficult motion trajectories. However, it is desirable to use cheap small form factor systems, e.g., small UAVs with a single camera setup. We propose a simple and efficient appearance based method for using LiDAR data in a monocular vision mapping system by using pose graph optimization. Provided laser scans are available, our system allows for a robust metric mapping and localization with single electro-optical sensors. We use large sets of synthetically generated 2-D LiDAR intensity views in order to globally register camera images. We especially provide insights for generating the synthetic intensity images and extracting features from such data. This enables the global appearance based 2-D/3-D registration of 2-D camera images to a metric 3-D point cloud data. As a result we are able to correct camera trajectories and estimate geo-referenced, metric structure from monocular camera images. Possible applications are numerous and include autonomous navigation, real-time map updating/extension or vision based indoor mapping.
Keywords :
autonomous aerial vehicles; cameras; computer vision; feature extraction; image registration; optical radar; optimisation; photogrammetry; 2D LiDAR intensity views; 2D camera images; 2D/3D registration; LiDAR data; autonomous navigation; computer vision; electro-optical sensors; error accumulation; extracting features; inherent 7-DoF; laser scans; monocular camera trajectory optimization; monocular vision mapping; photogrammetry; pose graph optimization; precise online mapping; real-time map updating/extension; robust metric mapping; scale drift; single projective sensor configurations; small UAV; surrounding scenery; synthetic intensity images; Cameras; Feature extraction; Laser radar; Lasers; Optimization; Three dimensional displays; Trajectory;
Conference_Titel :
Computer Vision Workshops (ICCV Workshops), 2011 IEEE International Conference on
Conference_Location :
Barcelona
Print_ISBN :
978-1-4673-0062-9
DOI :
10.1109/ICCVW.2011.6130496