English

Learning View Generalization Functions

Computer Vision and Pattern Recognition 2007-12-04 v1

Abstract

Learning object models from views in 3D visual object recognition is usually formulated either as a function approximation problem of a function describing the view-manifold of an object, or as that of learning a class-conditional density. This paper describes an alternative framework for learning in visual object recognition, that of learning the view-generalization function. Using the view-generalization function, an observer can perform Bayes-optimal 3D object recognition given one or more 2D training views directly, without the need for a separate model acquisition step. The paper shows that view generalization functions can be computationally practical by restating two widely-used methods, the eigenspace and linear combination of views approaches, in a view generalization framework. The paper relates the approach to recent methods for object recognition based on non-uniform blurring. The paper presents results both on simulated 3D ``paperclip'' objects and real-world images from the COIL-100 database showing that useful view-generalization functions can be realistically be learned from a comparatively small number of training examples.

Keywords

Cite

@article{arxiv.0712.0136,
  title  = {Learning View Generalization Functions},
  author = {Thomas M. Breuel},
  journal= {arXiv preprint arXiv:0712.0136},
  year   = {2007}
}
R2 v1 2026-06-21T09:49:30.687Z