Deng-Yuan Huang, Chao-Ho Chen, Tsong-Yi Chen, Jian-He Wu, C. Ko
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引用次数: 10
摘要
本文介绍了一种基于移动摄像机的实时人脸检测系统。该系统由三个模块组成,包括:(1)候选人脸检测:利用肤色、边缘和面部面积信息生成候选人脸;(2)候选人脸验证:从候选人脸中生成HOG (Histogram of Oriented Gradient)特征,并使用预训练的人脸样本进行两类C-SVM(支持向量机)分类器判断候选人脸是否为真实人脸;估计当前帧和前一帧中两个人脸目标的重叠区域,以确定跟踪是否连续。该方法利用人脸尺寸的估计,避免了传统逐点扫描方法所需要的大量计算时间。此外,还可以大大提高人脸检测的准确性。该系统能够成功地检测出开放空间中大多数人群的人脸,有利于快速搜索指定人员,防止可能发生的犯罪事件的发生。
This paper presents a real-time face detection system using a moving camera. The proposed system consists of three modules, including (1) detection of face candidates: Face candidates are generated using the information of skin color, edges, and face area, (2) verification of face candidates: HOG (Histogram of Oriented Gradient) features are generated from face candidates and a two-class C-SVM (Support Vector Machine) classifier with pretrained face samples is employed to determine whether face candidates are real faces or not, (3) face tracking: Overlapping area of two face targets in current and previous frames is estimated to determine whether the tracking will be continuous or not. By use of estimation of face size, the proposed method can avoid a huge amount of computation time that is required by a point-by-point scanning way in conventional methods. Moreover, the accuracy of the face detection can be improved greatly. The proposed system can successfully detect most faces of the crowds in open space, which is beneficial for quickly searching the specified persons to prevent the occurrence of possible criminal events.