Home /Research /Introducing New AdaBoost Features for Real-Time Vehicle Detection
PERCEPTION

Introducing New AdaBoost Features for Real-Time Vehicle Detection

Bogdan Stanciulescu, Amaury Breheret, Fabien Moutarde

Year
2009
Citations
17
Access
Open access

Abstract

This paper shows how to improve the real-time object detection in complex robotics applications, by exploring new visual features as AdaBoost weak classifiers. These new features are symmetric Haar filters (enforcing global horizontal and vertical symmetry) and N-connexity control points. Experimental evaluation on a car database show that the latter appear to provide the best results for the vehicle-detection problem.

Keywords

AdaBoostArtificial intelligenceHaar-like featuresComputer scienceRoboticsObject detectionComputer visionPattern recognition (psychology)HaarViola–Jones object detection framework

Related papers

Browse all PERCEPTION papers