Sciweavers

CVPR
2007
IEEE

Improving Part based Object Detection by Unsupervised, Online Boosting

14 years 3 months ago
Improving Part based Object Detection by Unsupervised, Online Boosting
Detection of objects of a given class is important for many applications. However it is difficult to learn a general detector with high detection rate as well as low false alarm rate. Especially, the labor needed for manually labeling a huge training sample set is usually not affordable. We propose an unsupervised, incremental learning approach based on online boosting to improve the performance on special applications of a set of general part detectors, which are learned from a small amount of labeled data and have moderate accuracy. Our oracle for unsupervised learning, which has high precision, is based on a combination of a set of shape based part detectors learned by off-line boosting. Our online boosting algorithm, which is designed for cascade structure detector, is able to adapt the simple features, the base classifiers, the cascade decision strategy, and the complexity of the cascade automatically to the special application. We integrate two noise restraining strategies in bo...
Bo Wu, Ram Nevatia
Added 14 Aug 2010
Updated 14 Aug 2010
Type Conference
Year 2007
Where CVPR
Authors Bo Wu, Ram Nevatia
Comments (0)