DocumentCode
3017208
Title
Reducing correspondence ambiguity in loosely labeled training data
Author
Barnard, Kobus ; Fan, Quanfu
Author_Institution
Univ. of Arizona, Tucson
fYear
2007
fDate
17-22 June 2007
Firstpage
1
Lastpage
8
Abstract
We develop an approach to reduce correspondence ambiguity in training data where data items are associated with sets of plausible labels. Our domain is images annotated with keywords where it is not known which part of the image a keyword refers to. In contrast to earlier approaches that build predictive models or classifiers despite the ambiguity, we argue that that it is better to first address the correspondence ambiguity, and then build more complex models from the improved training data. This addresses difficulties of fitting complex models in the face of ambiguity while exploiting all the constraints available from the training data. We contribute a simple and flexible formulation of the problem, and show results validated by a recently developed comprehensive evaluation data set and corresponding evaluation methodology.
Keywords
image classification; learning (artificial intelligence); correspondence ambiguity reduction; image classifier; keywords; loosely labeled training data; predictive models; Birds; Horses; Image recognition; Image retrieval; Information resources; Labeling; Predictive models; Text recognition; Training data; Vocabulary;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition, 2007. CVPR '07. IEEE Conference on
Conference_Location
Minneapolis, MN
ISSN
1063-6919
Print_ISBN
1-4244-1179-3
Electronic_ISBN
1063-6919
Type
conf
DOI
10.1109/CVPR.2007.383224
Filename
4270249
Link To Document