Representing Feature Location Uncertainties in Spherical Images
Files
Date issued
2013
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
Pose uncertainty estimation of calibrated cameras is a common task in the field of computer vision and uses
location uncertainties of image features. For spherical cameras, those uncertainties cannot be optimally described
using conventional latitude-longitude representation. Increasing distortions close to the poles of the spherical
coordinate system prevent a suitable description through Gaussians.
To overcome this limitation, we present a consistent location uncertainty representation for spherical image features:
Our approach is based on normal vectors in Cartesian space and applicable to any kind of camera with
convex projection surfaces, such as catadioptric and spherical systems. We compare its performance against
latitude-longitude representation by estimating camera pose uncertainties through first order error propagation
in a weighted least squares pose estimation scenario. Our experiments on synthetic and real data show that the
proposed approach delivers consistent results outperforming conventional latitude-longitude representation.
Description
Subject(s)
sférické zobrazování, vizualizace nejistoty
Citation
WSCG 2013: Full Papers Proceedings: 21st International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision in cooperation with EUROGRAPHICS Association, p. 187-194.