Difference between revisions of "Publications/xu.12.icip"
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{{Publication |
{{Publication |
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− | | |
+ | | published = true |
+ | | date = 2012-04-17 |
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| authors = Yongchao Xu, Thierry Géraud, Laurent Najman |
| authors = Yongchao Xu, Thierry Géraud, Laurent Najman |
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| title = Context-Based Energy Estimator: Application to Object Segmentation on the Tree of Shapes |
| title = Context-Based Energy Estimator: Application to Object Segmentation on the Tree of Shapes |
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| booktitle = Proceedings of the 19th International Conference on Image Processing (ICIP) |
| booktitle = Proceedings of the 19th International Conference on Image Processing (ICIP) |
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| address = Orlando, Florida, USA |
| address = Orlando, Florida, USA |
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+ | | pages = 1577 to 1580 |
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| organization = IEEE |
| organization = IEEE |
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− | | |
+ | | lrdeprojects = Olena |
− | | project = Image |
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− | | urllrde = 201204-ICIP |
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| abstract = Image segmentation can be defined as the detection of closed contours surrounding objects of interest. Given a family of closed curves obtained by some means, a difficulty is to extract the relevant ones. A classical approach is to define an energy minimization frameworkwhere interesting contours correspond to local minima of this energy. Active contours, graph cuts or minimum ratio cuts are instances of such approaches. In this article, we propose a novel, efficient ratio-cut estimator, which is both context-based and can be interpreted as an active contour. As a first example of the effectiveness of our formulation, we consider the tree of shapes, which provides a family of level lines organized in a tree hierarchy through an inclusion relationship. Thanks to the tree structure, the estimator can be computed incrementally in an efficient fashion. Experimental results on synthetic and real images demonstrate the robustness and usefulness of our method. |
| abstract = Image segmentation can be defined as the detection of closed contours surrounding objects of interest. Given a family of closed curves obtained by some means, a difficulty is to extract the relevant ones. A classical approach is to define an energy minimization frameworkwhere interesting contours correspond to local minima of this energy. Active contours, graph cuts or minimum ratio cuts are instances of such approaches. In this article, we propose a novel, efficient ratio-cut estimator, which is both context-based and can be interpreted as an active contour. As a first example of the effectiveness of our formulation, we consider the tree of shapes, which provides a family of level lines organized in a tree hierarchy through an inclusion relationship. Thanks to the tree structure, the estimator can be computed incrementally in an efficient fashion. Experimental results on synthetic and real images demonstrate the robustness and usefulness of our method. |
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| lrdepaper = http://www.lrde.epita.fr/dload//papers/xu.12.icip.pdf |
| lrdepaper = http://www.lrde.epita.fr/dload//papers/xu.12.icip.pdf |
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| lrdekeywords = Image |
| lrdekeywords = Image |
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+ | | lrdenewsdate = 2012-04-17 |
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| type = inproceedings |
| type = inproceedings |
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| id = xu.12.icip |
| id = xu.12.icip |
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address = <nowiki>{</nowiki>Orlando, Florida, USA<nowiki>}</nowiki>, |
address = <nowiki>{</nowiki>Orlando, Florida, USA<nowiki>}</nowiki>, |
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month = oct, |
month = oct, |
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organization = <nowiki>{</nowiki>IEEE<nowiki>}</nowiki>, |
organization = <nowiki>{</nowiki>IEEE<nowiki>}</nowiki>, |
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− | publisher = <nowiki>{</nowiki>IEEE<nowiki>}</nowiki>, |
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⚫ | |||
abstract = <nowiki>{</nowiki>Image segmentation can be defined as the detection of |
abstract = <nowiki>{</nowiki>Image segmentation can be defined as the detection of |
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closed contours surrounding objects of interest. Given a |
closed contours surrounding objects of interest. Given a |
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an efficient fashion. Experimental results on synthetic and |
an efficient fashion. Experimental results on synthetic and |
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real images demonstrate the robustness and usefulness of |
real images demonstrate the robustness and usefulness of |
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− | our method.<nowiki>}</nowiki> |
+ | our method.<nowiki>}</nowiki> |
− | lrdekeywords = <nowiki>{</nowiki>Image<nowiki>}</nowiki> |
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<nowiki>}</nowiki> |
<nowiki>}</nowiki> |
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Latest revision as of 18:58, 4 January 2018
- Authors
- Yongchao Xu, Thierry Géraud, Laurent Najman
- Where
- Proceedings of the 19th International Conference on Image Processing (ICIP)
- Place
- Orlando, Florida, USA
- Type
- inproceedings
- Projects
- Olena
- Keywords
- Image
- Date
- 2012-04-17
Abstract
Image segmentation can be defined as the detection of closed contours surrounding objects of interest. Given a family of closed curves obtained by some means, a difficulty is to extract the relevant ones. A classical approach is to define an energy minimization frameworkwhere interesting contours correspond to local minima of this energy. Active contours, graph cuts or minimum ratio cuts are instances of such approaches. In this article, we propose a novel, efficient ratio-cut estimator, which is both context-based and can be interpreted as an active contour. As a first example of the effectiveness of our formulation, we consider the tree of shapes, which provides a family of level lines organized in a tree hierarchy through an inclusion relationship. Thanks to the tree structure, the estimator can be computed incrementally in an efficient fashion. Experimental results on synthetic and real images demonstrate the robustness and usefulness of our method.
Documents
Bibtex (lrde.bib)
@InProceedings{ xu.12.icip, author = {Yongchao Xu and Thierry G\'eraud and Laurent Najman}, title = {Context-Based Energy Estimator: Application to Object Segmentation on the Tree of Shapes}, booktitle = {Proceedings of the 19th International Conference on Image Processing (ICIP)}, year = 2012, address = {Orlando, Florida, USA}, month = oct, pages = {1577--1580}, organization = {IEEE}, abstract = {Image segmentation can be defined as the detection of closed contours surrounding objects of interest. Given a family of closed curves obtained by some means, a difficulty is to extract the relevant ones. A classical approach is to define an energy minimization framework, where interesting contours correspond to local minima of this energy. Active contours, graph cuts or minimum ratio cuts are instances of such approaches. In this article, we propose a novel, efficient ratio-cut estimator, which is both context-based and can be interpreted as an active contour. As a first example of the effectiveness of our formulation, we consider the tree of shapes, which provides a family of level lines organized in a tree hierarchy through an inclusion relationship. Thanks to the tree structure, the estimator can be computed incrementally in an efficient fashion. Experimental results on synthetic and real images demonstrate the robustness and usefulness of our method.} }