Sections
You are here: Home ICG Publications Publication Objects Real-Time Tracking via On-line Boosting

Real-Time Tracking via On-line Boosting

Authors Grabner Helmut, Grabner Michael, Bischof Horst
Appeared in

Proceedings of the British Machine Vision Conference (BMVC'06), vol. 1, pages 47-56

Date  2006
Abstract

Very recently tracking was approached using classification techniques such as support vector machines. The object to be tracked is discriminated by a classifier from the background. In a similar spirit we propose a novel on-line AdaBoost feature selection algorithm for tracking. The distinct advantage of our method is its capability of on-line training. This allows to adapt the classifier while tracking the object. Therefore appearance changes of the object (e.g. out of plane rotations, illumination changes) are handled quite naturally. Moreover, depending on the background the algorithm selects the most discriminating features for tracking resulting in stable tracking results. By using fast computable features (e.g. Haar-like wavelets, orientation histograms, local binary patterns) the algorithm runs in real-time. We demonstrate the performance
of the algorithm on several (publically available) video sequences.

Link

PDF

[Powered by Plone]