Difference between revisions of "Publications/zhao.20.icpr.1"
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| title = FOANet: A Focus of Attention Network with Application to Myocardium Segmentation |
| title = FOANet: A Focus of Attention Network with Application to Myocardium Segmentation |
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| booktitle = Proceedings of the 25th International Conference on Pattern Recognition (ICPR) |
| booktitle = Proceedings of the 25th International Conference on Pattern Recognition (ICPR) |
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+ | | pages = 1120 to 1127 |
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+ | | address = Milan, Italy |
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+ | | publisher = IEEE |
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| abstract = In myocardium segmentation of cardiac magnetic resonance images, ambiguities often appear near the boundaries of the target domains due to tissue similarities. To address this issue, we propose a new architecture, called FOANet, which can be decomposed in three main steps: a localization stepa Gaussian-based contrast enhancement step, and a segmentation step. This architecture is supplied with a hybrid loss function that guides the FOANet to study the transformation relationship between the input image and the corresponding label in a three-level hierarchy (pixel-patch- and map-level), which is helpful to improve segmentation and recovery of the boundaries. We demonstrate the efficiency of our approach on two public datasets in terms of regional and boundary segmentations. |
| abstract = In myocardium segmentation of cardiac magnetic resonance images, ambiguities often appear near the boundaries of the target domains due to tissue similarities. To address this issue, we propose a new architecture, called FOANet, which can be decomposed in three main steps: a localization stepa Gaussian-based contrast enhancement step, and a segmentation step. This architecture is supplied with a hybrid loss function that guides the FOANet to study the transformation relationship between the input image and the corresponding label in a three-level hierarchy (pixel-patch- and map-level), which is helpful to improve segmentation and recovery of the boundaries. We demonstrate the efficiency of our approach on two public datasets in terms of regional and boundary segmentations. |
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| lrdepaper = http://www.lrde.epita.fr/dload/papers/zhao.20.icpr.1.pdf |
| lrdepaper = http://www.lrde.epita.fr/dload/papers/zhao.20.icpr.1.pdf |
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| type = inproceedings |
| type = inproceedings |
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| id = zhao.20.icpr.1 |
| id = zhao.20.icpr.1 |
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+ | | identifier = doi:10.1109/ICPR48806.2021.9412016 |
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| bibtex = |
| bibtex = |
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@InProceedings<nowiki>{</nowiki> zhao.20.icpr.1, |
@InProceedings<nowiki>{</nowiki> zhao.20.icpr.1, |
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booktitle = <nowiki>{</nowiki>Proceedings of the 25th International Conference on |
booktitle = <nowiki>{</nowiki>Proceedings of the 25th International Conference on |
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Pattern Recognition (ICPR)<nowiki>}</nowiki>, |
Pattern Recognition (ICPR)<nowiki>}</nowiki>, |
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− | year = |
+ | year = 2021, |
+ | pages = <nowiki>{</nowiki>1120--1127<nowiki>}</nowiki>, |
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+ | month = jan, |
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+ | address = <nowiki>{</nowiki>Milan, Italy<nowiki>}</nowiki>, |
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+ | publisher = <nowiki>{</nowiki>IEEE<nowiki>}</nowiki>, |
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abstract = <nowiki>{</nowiki>In myocardium segmentation of cardiac magnetic resonance |
abstract = <nowiki>{</nowiki>In myocardium segmentation of cardiac magnetic resonance |
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images, ambiguities often appear near the boundaries of the |
images, ambiguities often appear near the boundaries of the |
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segmentation and recovery of the boundaries. We demonstrate |
segmentation and recovery of the boundaries. We demonstrate |
||
the efficiency of our approach on two public datasets in |
the efficiency of our approach on two public datasets in |
||
− | terms of regional and boundary segmentations.<nowiki>}</nowiki> |
+ | terms of regional and boundary segmentations.<nowiki>}</nowiki>, |
+ | doi = <nowiki>{</nowiki>10.1109/ICPR48806.2021.9412016<nowiki>}</nowiki> |
||
<nowiki>}</nowiki> |
<nowiki>}</nowiki> |
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Latest revision as of 10:59, 8 September 2021
- Authors
- Zhou Zhao, Nicolas Boutry, Élodie Puybareau, Thierry Géraud
- Where
- Proceedings of the 25th International Conference on Pattern Recognition (ICPR)
- Place
- Milan, Italy
- Type
- inproceedings
- Publisher
- IEEE
- Projects
- Olena
- Keywords
- Image
- Date
- 2020-11-02
Abstract
In myocardium segmentation of cardiac magnetic resonance images, ambiguities often appear near the boundaries of the target domains due to tissue similarities. To address this issue, we propose a new architecture, called FOANet, which can be decomposed in three main steps: a localization stepa Gaussian-based contrast enhancement step, and a segmentation step. This architecture is supplied with a hybrid loss function that guides the FOANet to study the transformation relationship between the input image and the corresponding label in a three-level hierarchy (pixel-patch- and map-level), which is helpful to improve segmentation and recovery of the boundaries. We demonstrate the efficiency of our approach on two public datasets in terms of regional and boundary segmentations.
Documents
Bibtex (lrde.bib)
@InProceedings{ zhao.20.icpr.1, author = {Zhou Zhao and Nicolas Boutry and \'Elodie Puybareau and Thierry G\'eraud}, title = {{FOANet}: {A} Focus of Attention Network with Application to Myocardium Segmentation}, booktitle = {Proceedings of the 25th International Conference on Pattern Recognition (ICPR)}, year = 2021, pages = {1120--1127}, month = jan, address = {Milan, Italy}, publisher = {IEEE}, abstract = {In myocardium segmentation of cardiac magnetic resonance images, ambiguities often appear near the boundaries of the target domains due to tissue similarities. To address this issue, we propose a new architecture, called FOANet, which can be decomposed in three main steps: a localization step, a Gaussian-based contrast enhancement step, and a segmentation step. This architecture is supplied with a hybrid loss function that guides the FOANet to study the transformation relationship between the input image and the corresponding label in a three-level hierarchy (pixel-, patch- and map-level), which is helpful to improve segmentation and recovery of the boundaries. We demonstrate the efficiency of our approach on two public datasets in terms of regional and boundary segmentations.}, doi = {10.1109/ICPR48806.2021.9412016} }