Efficient Unsupervised Learning for Localization and Detection in Object Categories

Abstract

We describe a novel method for learning templates for recognition and localization of objects drawn from categories. A generative model repre- sents the configuration of multiple object parts with respect to an object coordinate system; these parts in turn generate image features. The com- plexity of the model in the number of features is low, meaning our model is much more efficient to train than comparative methods. Moreover, a variational approximation is introduced that allows learning to be or- ders of magnitude faster than previous approaches while incorporating many more features. This results in both accuracy and localization im- provements. Our model has been carefully tested on standard datasets; we compare with a number of recent template models. In particular, we demonstrate state-of-the-art results for detection and localization.

Cite

Text

Loeff et al. "Efficient Unsupervised Learning for Localization and Detection in Object Categories." Neural Information Processing Systems, 2005.

Markdown

[Loeff et al. "Efficient Unsupervised Learning for Localization and Detection in Object Categories." Neural Information Processing Systems, 2005.](https://mlanthology.org/neurips/2005/loeff2005neurips-efficient/)

BibTeX

@inproceedings{loeff2005neurips-efficient,
  title     = {{Efficient Unsupervised Learning for Localization and Detection in Object Categories}},
  author    = {Loeff, Nicolas and Arora, Himanshu and Sorokin, Alexander and Forsyth, David},
  booktitle = {Neural Information Processing Systems},
  year      = {2005},
  pages     = {811-818},
  url       = {https://mlanthology.org/neurips/2005/loeff2005neurips-efficient/}
}