articleJul 27, 2005Closed access
A Bayesian Hierarchical Model for Learning Natural Scene Categories
California Institute of Technology
Indexed incrossref
Abstract
We propose a novel approach to learn and recognize natural scene categories. Unlike previous work, it does not require experts to annotate the training set. We represent the image of a scene by a collection of local regions, denoted as codewords obtained by unsupervised learning. Each region is represented as part of a "theme". In previous work, such themes were learnt from hand-annotations of experts, while our method learns the theme distributions as well as the codewords distribution over the themes without supervision. We report satisfactory categorization performances on a large set of 13 categories of complex scenes.
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Keywords
- Categorization
- Theme (computing)
- Computer science
- Artificial intelligence
- Set (abstract data type)
- Natural (archaeology)
- Bayesian probability
- Machine learning
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