One-shot learning of object categories
Urbana University · University of Illinois Urbana-Champaign · +3 more institutions
Abstract
Learning visual models of object categories notoriously requires hundreds or thousands of training examples. We show that it is possible to learn much information about a category from just one, or a handful, of images. The key insight is that, rather than learning from scratch, one can take advantage of knowledge coming from previously learned categories, no matter how different these categories might be. We explore a Bayesian implementation of this idea. Object categories are represented by probabilistic models. Prior knowledge is represented as a probability density function on the parameters of these models. The posterior model for an object category is obtained by updating the prior in the light of one or…
Citation impact
- FWCI
- 67.56
- Percentile
- 100%
- References
- 52
Authors
3Topics & keywords
- Artificial intelligence
- Computer science
- Object (grammar)
- Machine learning
- Bayesian probability
- Maximum a posteriori estimation
- Probabilistic logic
- Cognitive neuroscience of visual object recognition