Modification of the AdaBoost-based Detector for Partially Occluded Faces

Jie Chen, S. Shan, Shengye Yan, Xilin Chen, Wen Gao
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引用次数: 24

Abstract

While face detection seems a solved problem under general conditions, most state-of-the-art systems degrade rapidly when faces are partially occluded by other objects. This paper presents a solution to detect partially occluded faces by reasonably modifying the AdaBoost-based face detector. Our basic idea is that the weak classifiers in the AdaBoost-based face detector, each corresponding to a Haar-like feature, are inherently a patch-based model. Therefore, one can divide the whole face region into multiple patches, and map those weak classifiers to the patches. The weak classifiers belonging to each patch are re-formed to be a new classifier to determine if it is a valid face patch - without occlusion. Finally, we combine all of the valid face patches by assigning the patches with different weights to make the final decision whether the input subwindow is a face. The experimental results show that the proposed method is promising for the detection of occluded faces
基于adaboost的部分遮挡人脸检测器的改进
虽然在一般情况下,人脸检测似乎是一个已经解决的问题,但当人脸部分被其他物体遮挡时,大多数最先进的系统都会迅速退化。本文通过对adaboost人脸检测器进行合理修改,提出了一种检测部分遮挡人脸的解决方案。我们的基本想法是,基于adaboost的人脸检测器中的弱分类器(每个分类器对应一个Haar-like feature)本质上是一个基于补丁的模型。因此,可以将整个人脸区域划分为多个小块,并将弱分类器映射到小块上。将属于每个patch的弱分类器重组为一个新的分类器,以确定该分类器是否为有效的无遮挡的人脸patch。最后,我们通过分配不同权重的patch来组合所有有效的人脸patch,最终判断输入子窗口是否为人脸。实验结果表明,该方法对遮挡人脸的检测具有较好的应用前景
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