Journal article
Automatic registration of optical imagery with 3D LiDAR data using statistical similarity
EG Parmehr, CS Fraser, C Zhang, J Leach
ISPRS Journal of Photogrammetry and Remote Sensing | Published : 2014
Abstract
The development of robust and accurate methods for automatic registration of optical imagery and 3D LiDAR data continues to be a challenge for a variety of applications in photogrammetry, computer vision and remote sensing. This paper proposes a new approach for the registration of optical imagery with LiDAR data based on the theory of Mutual Information (MI), which exploits the statistical dependency between same- and multi-modal datasets to achieve accurate registration. The MI-based similarity measures quantify dependencies between aerial imagery, and both LiDAR intensity data and 3D point cloud data. The needs for specific physical feature correspondences, which are not always attainable..
View full abstract