Representation of Uncertainty in Computer Vision Using Fuzzy Sets
- 1 February 1986
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in IEEE Transactions on Computers
- Vol. C-35 (2) , 145-156
- https://doi.org/10.1109/tc.1986.1676732
Abstract
Uncertainty in computer vision can arise at various levels. It can occur in the low level in the raw sensor input, and extends all the way through intermediate and higher levels. Ideally, at any level where decisions are being made on the basis of previous processing steps, a computer vision system must have sufficient flexibility for representation of uncertainty in any of these levels.Keywords
This publication has 20 references indexed in Scilit:
- Invited paper Picture processing using multiple-valued logicInternational Journal of Electronics, 1988
- Iterative fuzzy image segmentationPattern Recognition, 1985
- Survey of Model-Based Image Analysis SystemsThe International Journal of Robotics Research, 1982
- Symbolic reasoning among 3-D models and 2-D imagesArtificial Intelligence, 1981
- Color information for region segmentationComputer Graphics and Image Processing, 1980
- The Hearsay-II Speech-Understanding System: Integrating Knowledge to Resolve UncertaintyACM Computing Surveys, 1980
- Production rules as a representation for a knowledge-based consultation programArtificial Intelligence, 1977
- The shape-oriented dissimilarity of polygons and its application to the classification of chromosome imagesPattern Recognition, 1974
- Proximity Measures for the Classification of Geometric FiguresJournal of Cybernetics, 1972
- A modified Helmholtz line-element in brightness-colour spaceProceedings of the Physical Society, 1946