Difference between revisions of "Publications/geraud.13.ismm"
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| project = Image |
| project = Image |
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| urllrde = 201305-ISMMa |
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− | | abstract = To compute the morphological self-dual representation of images, namely the tree of shapes, the state-of-the-art algorithms do not have a satisfactory time complexity. Furthermore the proposed algorithms are only effective for 2D images and they are far from being simple to implement. That is really penalizing since a self-dual represen- tation of images is a structure that gives rise to many powerful operators and applications, and that could be very useful for 3D images. In this paper we propose a simple-to-write algorithm to compute the tree of shapes; it works for nD images and has a quasi-linear complexity when data quantization is low, typically 12 bits or less. To get that result, this paper introduces a novel representation of images that has some amazing properties of |
+ | | abstract = To compute the morphological self-dual representation of images, namely the tree of shapes, the state-of-the-art algorithms do not have a satisfactory time complexity. Furthermore the proposed algorithms are only effective for 2D images and they are far from being simple to implement. That is really penalizing since a self-dual represen- tation of images is a structure that gives rise to many powerful operators and applications, and that could be very useful for 3D images. In this paper we propose a simple-to-write algorithm to compute the tree of shapes; it works for nD images and has a quasi-linear complexity when data quantization is low, typically 12 bits or less. To get that result, this paper introduces a novel representation of images that has some amazing properties of continuitywhile remaining discrete. |
| lrdepaper = http://www.lrde.epita.fr/dload/papers/geraud.2013.ismm.pdf |
| lrdepaper = http://www.lrde.epita.fr/dload/papers/geraud.2013.ismm.pdf |
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| lrdekeywords = Image |
| lrdekeywords = Image |
Revision as of 09:01, 10 September 2014
- Authors
- Thierry Géraud, Edwin Carlinet, Sébastien Crozet, Laurent Najman
- Where
- Mathematical Morphology and Its Application to Signal and Image Processing -- Proceedings of the 11th International Symposium on Mathematical Morphology (ISMM)
- Place
- Heidelberg
- Type
- inproceedings
- Publisher
- Springer
- Keywords
- Image
- Date
- 2013-03-14
Abstract
To compute the morphological self-dual representation of images, namely the tree of shapes, the state-of-the-art algorithms do not have a satisfactory time complexity. Furthermore the proposed algorithms are only effective for 2D images and they are far from being simple to implement. That is really penalizing since a self-dual represen- tation of images is a structure that gives rise to many powerful operators and applications, and that could be very useful for 3D images. In this paper we propose a simple-to-write algorithm to compute the tree of shapes; it works for nD images and has a quasi-linear complexity when data quantization is low, typically 12 bits or less. To get that result, this paper introduces a novel representation of images that has some amazing properties of continuitywhile remaining discrete.
Documents
Bibtex (lrde.bib)
@InProceedings{ geraud.13.ismm, author = {Thierry G\'eraud and Edwin Carlinet and S\'ebastien Crozet and Laurent Najman}, title = {A quasi-linear algorithm to compute the tree of shapes of {$n$-D} images.}, booktitle = {Mathematical Morphology and Its Application to Signal and Image Processing -- Proceedings of the 11th International Symposium on Mathematical Morphology (ISMM)}, year = 2013, editor = {C.L. Luengo Hendriks and G. Borgefors and R. Strand}, volume = 7883, series = {Lecture Notes in Computer Science Series}, address = {Heidelberg}, publisher = {Springer}, pages = {98--110}, project = {Image}, abstract = {To compute the morphological self-dual representation of images, namely the tree of shapes, the state-of-the-art algorithms do not have a satisfactory time complexity. Furthermore the proposed algorithms are only effective for 2D images and they are far from being simple to implement. That is really penalizing since a self-dual represen- tation of images is a structure that gives rise to many powerful operators and applications, and that could be very useful for 3D images. In this paper we propose a simple-to-write algorithm to compute the tree of shapes; it works for nD images and has a quasi-linear complexity when data quantization is low, typically 12 bits or less. To get that result, this paper introduces a novel representation of images that has some amazing properties of continuity, while remaining discrete.} }