Difference between revisions of "Publications/xu.15.ismm"
From LRDE
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| authors = Yongchao Xu, Edwin Carlinet, Thierry Géraud, Laurent Najman |
| authors = Yongchao Xu, Edwin Carlinet, Thierry Géraud, Laurent Najman |
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| title = Efficient Computation of Attributes and Saliency Maps on Tree-Based Image Representations |
| title = Efficient Computation of Attributes and Saliency Maps on Tree-Based Image Representations |
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− | | booktitle = Mathematical Morphology and Its Application to Signal and Image Processing |
+ | | booktitle = Mathematical Morphology and Its Application to Signal and Image Processing – Proceedings of the 12th International Symposium on Mathematical Morphology (ISMM) |
| series = Lecture Notes in Computer Science Series |
| series = Lecture Notes in Computer Science Series |
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| volume = 9082 |
| volume = 9082 |
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| editors = J A Benediktsson, J Chanussot, L Najman, H Talbot |
| editors = J A Benediktsson, J Chanussot, L Najman, H Talbot |
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| pages = 693 to 704 |
| pages = 693 to 704 |
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− | | |
+ | | lrdeprojects = Olena |
⚫ | | abstract = Tree-based image representations are popular tools for many applications in mathematical morphology and image processing. Classically, one computes an attribute on each node of a tree and decides whether to preserve or remove some nodes upon the attribute function. This attribute function plays a key role for the good performance of tree-based applications. In this paper, we propose several algorithms to compute efficiently some attribute information. The first one is incremental computation of information on region, contour, and context. Then we show how to compute efficiently extremal information along the contour (e.g., minimal gradient's magnitude along the contour). Lastly, we depict computation of extinction-based saliency map using tree-based image representations. The computation complexity and the memory cost of these algorithms are analyzed. To the best of our knowledgeexcept information on region, none of the other algorithms is presented explicitly in any state-of-the-art paper. |
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− | | urllrde = 201503-ISMMc |
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⚫ | | abstract = Tree-based image representations are popular tools for many applications in mathematical morphology and image processing. Classically, one computes an attribute on each node of a tree and decides whether to preserve or remove some nodes upon the attribute function. This attribute function plays a key role for the good performance of tree-based applications. In this paper, we propose several algorithms to compute efficiently some attribute information. The first one is incremental computation of information on region, contour, and context. Then we show how to compute efficiently extremal information along the contour ( |
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| lrdepaper = http://www.lrde.epita.fr/dload/papers/xu.15.ismm.pdf |
| lrdepaper = http://www.lrde.epita.fr/dload/papers/xu.15.ismm.pdf |
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| lrdekeywords = Image |
| lrdekeywords = Image |
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| type = inproceedings |
| type = inproceedings |
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| id = xu.15.ismm |
| id = xu.15.ismm |
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+ | | identifier = doi:10.1007/978-3-319-18720-4_58 |
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| bibtex = |
| bibtex = |
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@InProceedings<nowiki>{</nowiki> xu.15.ismm, |
@InProceedings<nowiki>{</nowiki> xu.15.ismm, |
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Talbot<nowiki>}</nowiki>, |
Talbot<nowiki>}</nowiki>, |
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pages = <nowiki>{</nowiki>693--704<nowiki>}</nowiki>, |
pages = <nowiki>{</nowiki>693--704<nowiki>}</nowiki>, |
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⚫ | |||
abstract = <nowiki>{</nowiki>Tree-based image representations are popular tools for |
abstract = <nowiki>{</nowiki>Tree-based image representations are popular tools for |
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many applications in mathematical morphology and image |
many applications in mathematical morphology and image |
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information on region, contour, and context. Then we show |
information on region, contour, and context. Then we show |
||
how to compute efficiently extremal information along the |
how to compute efficiently extremal information along the |
||
− | contour ( |
+ | contour (e.g., minimal gradient's magnitude along the |
contour). Lastly, we depict computation of extinction-based |
contour). Lastly, we depict computation of extinction-based |
||
saliency map using tree-based image representations. The |
saliency map using tree-based image representations. The |
||
Line 54: | Line 53: | ||
algorithms are analyzed. To the best of our knowledge, |
algorithms are analyzed. To the best of our knowledge, |
||
except information on region, none of the other algorithms |
except information on region, none of the other algorithms |
||
− | is presented explicitly in any state-of-the-art paper.<nowiki>}</nowiki> |
+ | is presented explicitly in any state-of-the-art paper.<nowiki>}</nowiki>, |
⚫ | |||
<nowiki>}</nowiki> |
<nowiki>}</nowiki> |
||
Latest revision as of 17:02, 27 May 2021
- Authors
- Yongchao Xu, Edwin Carlinet, Thierry Géraud, Laurent Najman
- Where
- Mathematical Morphology and Its Application to Signal and Image Processing – Proceedings of the 12th International Symposium on Mathematical Morphology (ISMM)
- Place
- Reykjavik, Iceland
- Type
- inproceedings
- Publisher
- Springer
- Projects
- Olena
- Keywords
- Image
- Date
- 2015-04-07
Abstract
Tree-based image representations are popular tools for many applications in mathematical morphology and image processing. Classically, one computes an attribute on each node of a tree and decides whether to preserve or remove some nodes upon the attribute function. This attribute function plays a key role for the good performance of tree-based applications. In this paper, we propose several algorithms to compute efficiently some attribute information. The first one is incremental computation of information on region, contour, and context. Then we show how to compute efficiently extremal information along the contour (e.g., minimal gradient's magnitude along the contour). Lastly, we depict computation of extinction-based saliency map using tree-based image representations. The computation complexity and the memory cost of these algorithms are analyzed. To the best of our knowledgeexcept information on region, none of the other algorithms is presented explicitly in any state-of-the-art paper.
Documents
Bibtex (lrde.bib)
@InProceedings{ xu.15.ismm, author = {Yongchao Xu and Edwin Carlinet and Thierry G\'eraud and Laurent Najman}, title = {Efficient Computation of Attributes and Saliency Maps on Tree-Based Image Representations}, booktitle = {Mathematical Morphology and Its Application to Signal and Image Processing -- Proceedings of the 12th International Symposium on Mathematical Morphology (ISMM)}, year = {2015}, series = {Lecture Notes in Computer Science Series}, volume = {9082}, address = {Reykjavik, Iceland}, publisher = {Springer}, editor = {J.A. Benediktsson and J. Chanussot and L. Najman and H. Talbot}, pages = {693--704}, abstract = {Tree-based image representations are popular tools for many applications in mathematical morphology and image processing. Classically, one computes an attribute on each node of a tree and decides whether to preserve or remove some nodes upon the attribute function. This attribute function plays a key role for the good performance of tree-based applications. In this paper, we propose several algorithms to compute efficiently some attribute information. The first one is incremental computation of information on region, contour, and context. Then we show how to compute efficiently extremal information along the contour (e.g., minimal gradient's magnitude along the contour). Lastly, we depict computation of extinction-based saliency map using tree-based image representations. The computation complexity and the memory cost of these algorithms are analyzed. To the best of our knowledge, except information on region, none of the other algorithms is presented explicitly in any state-of-the-art paper.}, doi = {10.1007/978-3-319-18720-4_58} }