Here, we turn our attention to barycentric embeddings and examine their utility for semi-supervised image labelling tasks. To this end, we view the pixels in the image as vertices in a graph and their pairwise affinities as weights of the edges between them. Abstracted in this manner, we can pose the semi-supervised labelling problem into a graph theoretic setting where the labels are assigned based upon the distance in the embedding space between the nodes corresponding to the unlabelled pixels and those whose labels are in hand. We do this using a barycentric embedding approach which naturally leads to a setting in which the embedding coordinates can be computed by solving a system of linear equations. Moreover, the method presented here can incorporate side information such as that delivered by colour priors used elsewhere in the literature for semi-supervised colour image labelling. We illustrate the utility of our method for colour image labelling and material classification on hyperspectal images. We also compare our results against other techniques elsewhere in literature.
History
Pagination
1518-1523
Location
Cancun, Mexico
Start date
2016-12-04
End date
2016-12-08
ISBN-13
978-1-5090-4847-2
Language
eng
Publication classification
E1.1 Full written paper - refereed
Copyright notice
2016, IEEE
Editor/Contributor(s)
[Unknown]
Title of proceedings
ICPR : Proceedings of the 2016 23rd International Conference on Pattern Recognition
Event
International Association for Pattern Recognition. Conference (23rd : 2016 : Cancun, Mexico)
Publisher
Institute of Electrical and Electronics Engineers
Place of publication
Piscataway, N.J.
Series
International Association for Pattern Recognition Conference