Sciweavers

IBPRIA
2009
Springer

Local Boosted Features for Pedestrian Detection

13 years 9 months ago
Local Boosted Features for Pedestrian Detection
The present paper addresses pedestrian detection using local boosted features that are learned from a small set of training images. Our contribution is to use two boosting steps. The first one learns discriminant local features corresponding to pedestrian parts and the second one selects and combines these boosted features into a robust class classifier. In contrast of other works, our features are based on local differences over Histograms of Oriented Gradients (HoGs). Experiments carried out to a public dataset of pedestrian images show good performance with high classification rates. 1
Michael Villamizar, Alberto Sanfeliu, Juan Andrade
Added 25 Jul 2010
Updated 25 Jul 2010
Type Conference
Year 2009
Where IBPRIA
Authors Michael Villamizar, Alberto Sanfeliu, Juan Andrade-Cetto
Comments (0)