Sciweavers

FGR
2000
IEEE

Viewpoint-Invariant Learning and Detection of Human Heads

13 years 8 months ago
Viewpoint-Invariant Learning and Detection of Human Heads
We present a method to learn models of human heads for the purpose of detection from different viewing angles. We focus on a model where objects are represented as constellations of rigid features (parts). Variability is represented by a joint probability density function (pdf) on the shape of the constellation. In a first stage, the method automatically identifies distinctive features in the training set using an interest operator followed by vector quantization. The set of model parameters, including the shape pdf, is then learned using expectation maximization. Experiments show good generalization performance to novel viewpoints and unseen faces. Performance is above ¼% correct with less than ½s computation time per image.
Markus Weber, Wolfgang Einhäuser, Max Welling
Added 31 Jul 2010
Updated 31 Jul 2010
Type Conference
Year 2000
Where FGR
Authors Markus Weber, Wolfgang Einhäuser, Max Welling, Pietro Perona
Comments (0)