Difference between revisions of "Publications/xu.15.prl"

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{{Publication
 
| published = false
 
| date = 2015-09-16
 
| authors = Yongchao Xu, Thierry Géraud, Laurent Najman
 
| title = Hierarchical image simplification and segmentation based on Mumford-Shah-salient level line selection
 
| journal = Submitted
 
| project = Image
 
| abstract = Hierarchies are popular representations for image simplification and segmentation thanks to their multiscale structures. An example is the tree of shapes. Selecting meaningful level lines (boundaries of shapes) yields to simplify image while preserving intact salient structures. Many image simplification and segmentation methods are driven by the optimization of an energy functional, for instance the Mumford-Shah functional. In this paper, we propose an efficient approach of hierarchical image simplification and segmentation based on the minimization of some energy functional. This method conforms to the current trends that are to find hierarchical results rather than a unique partition. Contrary to classical approaches which compute optimal hierarchical segmentations from an input hierarchy of segmentations, we rely on the tree of shapes, a unique and equivalent image representation. Whereas, the construction of the input hierarchy for the classical approaches is an interesting problem in itself. Simply put, we compute an attribute function for each level line that characterizes its resistance under the energy minimization. Then we stack the level lines from meaningless ones to salient ones through a saliency map using shape-space filtering framework. Qualitative illustrations and quantitative evaluation on Weizmann segmentation evaluation database demonstrate the good performance of our method.
 
| note = Submitted
 
| urllrde = 201509-PRL
 
| lrdeinc = Publications/xu.15.prl.inc
 
| lrdekeywords = Image
 
| optlrdepaper = https://www.lrde.epita.fr/dload/papers/xu.2015.prl.pdf
 
| type = article
 
| id = xu.2015.prl
 
| bibtex =
 
@Article<nowiki>{</nowiki> xu.2015.prl,
 
author = <nowiki>{</nowiki>Yongchao Xu and Thierry G\'eraud<nowiki> and Laurent Najman<nowiki>}</nowiki>,
 
title = <nowiki>{</nowiki>Hierarchical image simplification and segmentation based on Mumford-Shah-salient level line selection<nowiki>}</nowiki>,
 
journal = <nowiki>{</nowiki>Pattern Recognition Letters<nowiki>}</nowiki>,
 
year = 2015,
 
project = <nowiki>{</nowiki>Image<nowiki>}</nowiki>,
 
abstract = <nowiki>{</nowiki>Hierarchies are popular representations for image simplification and
 
segmentation thanks to their multiscale structures. An example is the
 
tree of shapes. Selecting meaningful level lines (boundaries of
 
shapes) yields to simplify image while preserving intact salient
 
structures. Many image simplification and segmentation methods are
 
driven by the optimization of an energy functional, for instance the
 
Mumford-Shah functional. In this paper, we propose an efficient
 
approach of hierarchical image simplification and segmentation based
 
on the minimization of some energy functional. This method conforms
 
to the current trends that are to find hierarchical results rather
 
than a unique partition. Contrary to classical approaches which
 
compute optimal hierarchical segmentations from an input hierarchy of
 
segmentations, we rely on the tree of shapes, a unique and equivalent
 
image representation. Whereas, the construction of the input hierarchy
 
for the classical approaches is an interesting problem in
 
itself. Simply put, we compute an attribute function for each level
 
line that characterizes its resistance under the energy
 
minimization. Then we stack the level lines from meaningless ones to
 
salient ones through a saliency map using shape-space filtering
 
framework. Qualitative illustrations and quantitative evaluation on
 
Weizmann segmentation evaluation database demonstrate the good
 
performance of our method.<nowiki>}</nowiki>,
 
note = <nowiki>{</nowiki>Submitted<nowiki>}</nowiki>,
 
optlrdepaper = <nowiki>{</nowiki>https://www.lrde.epita.fr/dload/papers/xu.2015.prl.pdf<nowiki>}</nowiki>
 
 
<nowiki>}</nowiki>
 
 
}}
 

Latest revision as of 16:47, 21 September 2015