Difference between revisions of "Publications/bloch.05.prl"
From LRDE
(Created page with "{{Publication | date = 2004-07-09 | authors = Isabelle Bloch, Olivier Colliot, Oscar Camara, Thierry Géraud | title = Fusion of spatial relationships for guiding recognitione...") |
|||
Line 1: | Line 1: | ||
{{Publication |
{{Publication |
||
+ | | published = true |
||
| date = 2004-07-09 |
| date = 2004-07-09 |
||
| authors = Isabelle Bloch, Olivier Colliot, Oscar Camara, Thierry Géraud |
| authors = Isabelle Bloch, Olivier Colliot, Oscar Camara, Thierry Géraud |
Revision as of 15:50, 14 November 2013
- Authors
- Isabelle Bloch, Olivier Colliot, Oscar Camara, Thierry Géraud
- Journal
- Pattern Recognition Letters
- Type
- article
- Keywords
- Image
- Date
- 2004-07-09
Abstract
Spatial relations play an important role in recognition of structures embedded in a complex environment and for reasoning under imprecision. Several types of relationships can be modeled in a unified way using fuzzy mathematical morphology. Their combination benefits from the powerful framework of fuzzy set theory for fusion tasks and decision making. This paper presents several methods of fusion of information about spatial relationships and illustrates them on the example of model-based recognition of brain structures in 3D magnetic resonance imaging.
Bibtex (lrde.bib)
@Article{ bloch.05.prl, author = {Isabelle Bloch and Olivier Colliot and Oscar Camara and Thierry G\'eraud}, title = {Fusion of spatial relationships for guiding recognition, example of brain structure recognition in {3D} {MRI}}, journal = {Pattern Recognition Letters}, year = 2005, volume = 26, number = 4, month = mar, pages = {449--457}, project = {Image}, abstract = {Spatial relations play an important role in recognition of structures embedded in a complex environment and for reasoning under imprecision. Several types of relationships can be modeled in a unified way using fuzzy mathematical morphology. Their combination benefits from the powerful framework of fuzzy set theory for fusion tasks and decision making. This paper presents several methods of fusion of information about spatial relationships and illustrates them on the example of model-based recognition of brain structures in 3D magnetic resonance imaging.} }