Title :
Error propagation for DEM-based georegistration of motion imagery
Author :
Pritt, Mark D. ; Wright, Edward J. ; LaTourette, Kevin J.
Author_Institution :
Lockheed Martin, Gaithersburg, MD, USA
Abstract :
A new method for georegistering motion imagery has recently been introduced. It requires a digital elevation model (DEM) from which it generates and registers predicted images to actual images. For aerial imagery, including wide area motion imagery (WAMI) and full motion video (FMV), the method fits a multi-parameter camera model composed of exterior and interior orientation parameters including radial distortion. In this paper we describe an algorithm for estimating the geospatial accuracy of DEM-based georegistration algorithms. It employs statistical methods to calculate the error distributions of the georegistered camera model parameters and propagate them to the ground. Monte Carlo methods are employed to achieve accurate results for oblique imagery with occluded features. For FMV imagery georegistered to a high-resolution LIDAR DEM, we obtained a horizontal error of 2.3 m CE90 and vertical error of 0.66 m LE90. These values increased in regions of the images where the obliquity angles and ranges increased. Comparison with GPS data demonstrated that the error estimates were reliable. For WAMI data georegistered to a low-resolution USGS DEM, we obtained an accuracy of 16.6 m CE90 and 8.2 m LE90. In this case poor DEM accuracy limited the georegistration accuracy.
Keywords :
Monte Carlo methods; cameras; digital elevation models; feature extraction; geography; image motion analysis; image registration; optical radar; video signal processing; DEM-based georegistration; LIDAR DEM; Monte Carlo method; aerial imagery; digital elevation model; error propagation; exterior orientation parameter; full motion video; interior orientation parameter; light detection and ranging; motion imagery; multiparameter camera model; obliquity angle; occluded feature; radial distortion; statistical method; wide area motion imagery; Accuracy; Cameras; Covariance matrix; Gaussian distribution; Helicopters; Jacobian matrices; Monte Carlo methods; covariance; error propagation; georegistration; image registration; motion imagery;
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR), 2011 IEEE
Conference_Location :
Washington, DC
Print_ISBN :
978-1-4673-0215-9
DOI :
10.1109/AIPR.2011.6176342