A Robust and Universal Gradient Domain Imaging Solver Using Gradient Variables and Locally Varying Metrics

Loading...
Thumbnail Image
Date
2010
Journal Title
Journal ISSN
Volume Title
Publisher
The Eurographics Association
Abstract
Gradient Domain Imaging (GDI) has gained a high importance and provoked numerous powerful applications over the last decade. It employs a workflow of creating an inconsistent gradient field (GF) from one or more images using different non-linear operations and finally it determines an image with a consistent, integrable GF that falls near to the prescribed inconsistent one. However, the result is not really predictable, often suffers from halo-effects and other local distortions at higher frequencies as well as from uncontrollable far-effects arising from local gradient-contradictions. The unfolding of these artifacts culminates in an undesired overall image appearance. None of the common GDI solvers can overcome these side-effects as they utilize the same local isotropic 'coefficient-pattern' in a sparse matrix description and they differ only in the numerical solution techniques. We present a powerful GDI method solving the problem completely in the gradient domain with gradient-variables and using spatially varying metrics that depends only on the starting inconsistent gradient field. After obtaining the nearest consistent gradient field with the pre-defined metrics we return into the image space by double integration that yields the wanted pixel intensity values. Our method delivers a great aesthetic enhancement by eliminating halo effects and saving small details, furthermore providing a realistic and pleasant overall light distribution at lower frequencies. By significantly extending the range of allowed inconsistency in the prescribed gradient field, it also allows for solving a large class of problems that proved hopeless beforehand.
Description

        
@inproceedings{
:10.2312/COMPAESTH/COMPAESTH10/017-024
, booktitle = {
Computational Aesthetics in Graphics, Visualization, and Imaging
}, editor = {
Pauline Jepp and Oliver Deussen
}, title = {{
A Robust and Universal Gradient Domain Imaging Solver Using Gradient Variables and Locally Varying Metrics
}}, author = {
Neumann, László
and
Hegedüs, Ramón
}, year = {
2010
}, publisher = {
The Eurographics Association
}, ISSN = {
1816-0859
}, ISBN = {
978-3-905674-24-8
}, DOI = {
/10.2312/COMPAESTH/COMPAESTH10/017-024
} }
Citation