Title of article :
A Multiphase Dynamic Labeling Model for Variational Recognition-driven
Image Segmentation
Author/Authors :
DANIEL CREMERS، نويسنده , , NIR SOCHEN، نويسنده , , CHRISTOPH SCHNO¨ RR، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
We propose a variational framework for the integration of multiple competing shape priors into level
set based segmentation schemes. By optimizing an appropriate cost functional with respect to both a level set
function and a (vector-valued) labeling function, we jointly generate a segmentation (by the level set function) and
a recognition-driven partition of the image domain (by the labeling function) which indicates where to enforce
certain shape priors. Our framework fundamentally extends previous work on shape priors in level set segmentation
by directly addressing the central question of where to apply which prior. It allows for the seamless integration
of numerous shape priors such that—while segmenting both multiple known and unknown objects—the level set
process may selectively use specific shape knowledge for simultaneously enhancing segmentation and recognizing
shape.
Keywords :
image segmentation , shape priors , variational methods , level set methods , dynamic labeling , recognition modeling
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION