Automatic registration of LiDAR and optical imagery using depth map stereo

ICCP(2014)

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摘要
Automatic fusion of aerial optical imagery and untextured LiDAR data has been of significant interest for generating photo-realistic 3D urban models in recent years. However, unsupervised, robust registration still remains a challenge. This paper presents a new registration method that does not require priori knowledge such as GPS/INS information. The proposed algorithm is based on feature correspondence between a LiDAR depth map and a depth map from an optical image. Each optical depth map is generated from edge-preserving dense correspondence between the image and another optical image, followed by ground plane estimation and alignment for depth consistency. Our two-pass RANSAC with Maximum Likelihood estimation incorporates 2D-2D and 2D-3D correspondences to yield robust camera pose estimation. Experiments with a LiDAR-optical imagery dataset show promising results, without using initial pose information.
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关键词
ground plane estimation,image fusion,optical depth map,random processes,maximum likelihood estimation,photorealistic 3d urban model generation,pose estimation,depth map stereo,remote sensing by radar,automatic optical image registration,optical radar,robust camera pose estimation,geophysical image processing,cameras,lidar depth map,solid modelling,automatic aerial optical image fusion,image registration,optical information processing,depth consistency,two-pass ransac algorithm,stereo image processing,automatic lidar image registration,feature extraction,optical imaging,laser radar,estimation,adaptive optics
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