![]() |
|||||||
|
Main | Mathematical Models in Computer Vision: The Handbook, Springer (2005) | ||
Editors Preface Contents Contributors References Sample Chapter Order |
ABSTRACT: In this chapter, we propose to
concentrate on the research of an optimal domain with regards to a
global criterion including region and boundary functionals. A local
shape minimizer is obtained through the evolution of a deformable
domain in the direction of the shape gradient. Shape derivation tools,
coming from shape optimization theory, allow us to easily differentiate
region and boundary functionals. We more particularly focus on region
functionals involving region-dependent features that are globally
attached to the region. A general framework is proposed and illustrated
by many examples involving functions of parametric or non parametric
probability density functions (pdfs) of image features. Among these
functions, we notably study the minimization of information measures
such as the entropy for the segmentation of homogeneous regions or the
minimization of the distance between pdfs for tracking or matching
regions of interest.
|
||
|
|
|
|
|
|
Last Update: December20th,
2004, you can mail your comments to: nikos.paragios@computer.org
|
|
|
|||