In this paper, a new boosting algorithm, called FloatBoost, is proposed to construct a strong face-nonface classifier. FloatBoost incorporates the idea of Floating Search into AdaBoost, and yields similar or higher classification accuracy than AdaBoost with a smaller number of weak classifiers. We also present a novel framework for fast multi-view face detection. A detector-pyramid architecture is designed to quickly discard a vast number of non-face sub-windows and hence perform multi-view face detection efficiently. This results in the first real-time multi-view face detection system which runs at 5 frames per second for 320x240 image sequence.
Citation:
ZhenQiu Zhang1, MingJing Li, Stan Z. Li, HongJiang Zhang, "Multi-View Face Detection with FloatBoost," wacv, pp.184, Sixth IEEE Workshop on Applications of Computer Vision (WACV'02), 2002