Sciweavers

Share
MTA
2010

Investigating fuzzy DLs-based reasoning in semantic image analysis

9 years 4 months ago
Investigating fuzzy DLs-based reasoning in semantic image analysis
Recent advances in semantic image analysis have brought forth generic methodologies to support concept learning at large scale. The attained performance however is highly variable, reflecting effects related to similarities and variations in the visual manifestations of semantically distinct concepts, much as to the limitations issuing from considering semantics solely in the form of perceptual representations. Aiming to enhance performance and improve robustness, we investigate a fuzzy DLs-based reasoning framework, which enables the integration of scene and object classifications into a semantically consistent interpretation by capturing and utilising the underlying semantic associations. Evaluation with two sets of input classifiers, configured so as to vary with respect to the wealth of concepts’ interrelations, outlines the potential of the proposed approach in the presence of semantically rich associations, while delineating the issues and challenges involved. Keywords Fuzz...
Stamatia Dasiopoulou, Ioannis Kompatsiaris, Michae
Added 29 Jan 2011
Updated 29 Jan 2011
Type Journal
Year 2010
Where MTA
Authors Stamatia Dasiopoulou, Ioannis Kompatsiaris, Michael G. Strintzis
Comments (0)
books