期刊文献+

改进的AdaBoost人脸检测方法 被引量:14

Face Detection Based on Modified AdaBoost Algorithm
在线阅读 下载PDF
导出
摘要 针对传统AdaBoost算法检测速度快准确率低的问题,本文提出了一种改进的AdaBoost算法以提高人脸的正确检测率,该算法首先利用快速积分图提取人脸的Haar特征,然后使用阈值设定的方法对传统的AdaBoost算法进行改进,并将每次检测的最优弱分类器级联形成最终的强分类器,通过强弱分类器对Haar特征判别,从而检测图像中的人脸部分。采用本方法对多种实验图像集进行人脸检测实验,FERET彩色图像库的正确检测率为96.07%,视频图像的正确检测率为96%。实验结果表明,本文所设计的人脸检测算法能够对静态图像以及视频图像中的人脸进行有效检测,为人脸的正确识别打下了基础,该算法也为计算机视觉领域的研究提供一种有效方法。 According to the traditional AdaBoost algorithm with fast detection but low accuracy,a modified AdaBoost algorithm was presented to enhance the accuracy.First,the algorithm extracted Haar features of human face by rapid integral image.On the basis of this,it set the threshold value to modify the traditional AdaBoost algorithm and found the optimal weak classifier during each test,and then it cascaded them into strong classifier.Finally,strong classifier was developed to distinguish Haar feature and detect the part of face from images.The sample test results show that the classifier accuracy of FERET database is 96.07% and the video images is 96%.The experimental results demonstrate that the algorithm of human face detection designed can not only detect static images but also detect video images,which lay the foundation of face recognition and provide a kind of effective method for research of computer vision domain.
作者 柯丽 温立平
出处 《光电工程》 CAS CSCD 北大核心 2012年第1期113-118,共6页 Opto-Electronic Engineering
基金 沈阳市科技基金(1091075-2-00)
关键词 人脸检测 HAAR特征 ADABOOST算法 强分类器 face detection Haar feature AdaBoost algorithm strong classifier
  • 相关文献

参考文献11

二级参考文献155

  • 1OSHER S, SETHIAN J A. Fronts Propagating with Curvature Dependent Speed: Algorithms Based on Hamilton-Jacobi Formulations [J]. Journal of Computational Physics(S0021-9991), 1998, 79(1): 12-49.
  • 2KASS M, WITKIN A, TERZOPOULOS D. Snakes: Active Contour Models [C]//Proceedings of the 1st International Conference on Computer Vision, London, June 8-11, 1987: 259-268.
  • 3YINGHUA LU, YUANHUI WANG, XIANLIANG TONG, et al. Face Tracking in Video Sequences Using Particles Filter Based on Skin Color Model and Facial Contour [C]//Seeond International Symposium on Intelligent Information Technology Applieation, Shanghai, China, December20-22, 2008, 1: 457-461.
  • 4MURIEL G, MICHEL B. Combining Shape Prior and Statistical Features for Active Contour Segmentation [J]. IEEE Transaction on Circuit and Systems for Video Technology(S1051-8215), 2004, 14(5): 726-734.
  • 5LI Chun-ming, XU Chen-yang, GUI Chang-feng, et al [C]//Proceedings of the 2005 IEEE Computer Society Diego, CA, USA, June20-25, 2005, 1: 430-436. Level Set Without Re-initialization : A New Variational Formulation Conference on Computer Vision and Pattern Recognition, San.
  • 6YOGESH R, NAMRATA V, ANTHONY Y. Tracking Deforming Objects Using Particle Filtering for Geometric Active Contours [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence(S1470-1475), 2007, 29(8): 1470-1475.
  • 7SANJEEV M, SMON M, NElL G, et al. A Tutorial on Particle Filters for Online Nonlinear/Non-Gaussian Bayesian Tracking [J]. IEEE Transactions on Signal Processing(S1053-587X), 2002, 50(2): 174-188.
  • 8YANG G, HUANG T S. Human face detection in a complex background [J]. Pattern Recognition, 1994, 27(1) :53-63.
  • 9SIROHEY S A. Human face segmentation and identification [D]. Maryland:Computer Version Laboratory Center for Automation Research, University of Maryland, 1993.
  • 10YOW K C, CIPOLLA R. Feature-based human face detection [J]. Image and Vision Computing, 1997, 15(9) :713-735.

共引文献389

同被引文献130

引证文献14

二级引证文献59

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部