DocumentCode :
2403767
Title :
Slightly Supervised Learning of Part-Based Appearance Models
Author :
Xie, Lexing ; Pérez, Patrick
Author_Institution :
Columbia University, New York, NY
fYear :
2004
fDate :
27-02 June 2004
Firstpage :
107
Lastpage :
107
Abstract :
We extend the GMM-based approach of [Selection of scale-invariant parts for object class recognition], for learning part-based appearance models of object categories, to the unsupervised case where positive examples are corrupted with clutter. To this end, we derive an original version of EM which is able to fit one GMM per class based on partially labeled data. We also allow ourselves a small fraction of un-corrupted positive examples, thus obtaining an effective, yet cheap, slightly supervised learning. Proposed technique allows as well a saliency-based ranking and selection of learnt mixture components. Experiments show that both the semi-supervised GMM fitting with side information and the component selection are effective in identifying salient patches in the appearance of a class of objects. They are thus promising tools to learn class-specific models and detectors similar to those by Weber et al.[Unsupervised learning of models for recognition], but at a lower computational cost, while accommodating larger numbers of atomic parts.
Keywords :
Computational efficiency; Computer Society; Context modeling; Costs; Detectors; Focusing; Image edge detection; Supervised learning; Turning; Unsupervised learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition Workshop, 2004. CVPRW '04. Conference on
Type :
conf
DOI :
10.1109/CVPR.2004.166
Filename :
1384901
Link To Document :
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