Hierarchical classification and feature reduction for fast face detection with support vector machines
作者:
Highlights:
•
摘要
We present a two-step method to speed-up object detection systems in computer vision that use support vector machines as classifiers. In the first step we build a hierarchy of classifiers. On the bottom level, a simple and fast linear classifier analyzes the whole image and rejects large parts of the background. On the top level, a slower but more accurate classifier performs the final detection. We propose a new method for automatically building and training a hierarchy of classifiers. In the second step we apply feature reduction to the top level classifier by choosing relevant image features according to a measure derived from statistical learning theory. Experiments with a face detection system show that combining feature reduction with hierarchical classification leads to a speed-up by a factor of 335 with similar classification performance.
论文关键词:Face detection,Object detection,Feature reduction,Hierarchical classification,Support vector machines
论文评审过程:Accepted 15 January 2003, Available online 22 May 2003.
论文官网地址:https://doi.org/10.1016/S0031-3203(03)00062-1