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Face Detection under Complex Background and Illumination 被引量:2

Face Detection under Complex Background and Illumination
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摘要 For face detection under complex background and illumination, a detection method that combines the skin color segmentation and cost-sensitive Adaboost algorithm is proposed in this paper. First, by using the characteristic of human skin color clustering in the color space, the skin color area in YC b C r color space is extracted and a large number of irrelevant backgrounds are excluded; then for remedying the deficiencies of Adaboost algorithm, the cost-sensitive function is introduced into the Adaboost algorithm; finally the skin color segmentation and cost-sensitive Adaboost algorithm are combined for the face detection. Experimental results show that the proposed detection method has a higher detection rate and detection speed, which can more adapt to the actual field environment. For face detection under complex background and illumination, a detection method that combines the skin color segmentation and cost-sensitive Adaboost algorithm is proposed in this paper. First, by using the characteristic of human skin color clustering in the color space, the skin color area in YC b C r color space is extracted and a large number of irrelevant backgrounds are excluded; then for remedying the deficiencies of Adaboost algorithm, the cost-sensitive function is introduced into the Adaboost algorithm; finally the skin color segmentation and cost-sensitive Adaboost algorithm are combined for the face detection. Experimental results show that the proposed detection method has a higher detection rate and detection speed, which can more adapt to the actual field environment.
出处 《Journal of Electronic Science and Technology》 CAS CSCD 2015年第1期78-82,共5页 电子科技学刊(英文版)
基金 supported by the National Basic Research Program of China(973 Program)under Grant No.2012CB215202 the National Natural Science Foundation of China under Grant No.51205046
关键词 Adaboost cost-sensitive learning face detection skin color segmentation Adaboost,cost-sensitive learning,face detection,skin color segmentation
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参考文献18

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同被引文献9

  • 1江风兵.不同颜色空间肤色检测算法的研究[D].赣州:江西理工大学,2011.
  • 2Wu Yanwen, Ai Xueyi. Face detection in color images using AdaBoost algorithm based on skin color information[ C ]//Pro- ceedings of the first international workshop on knowledge dis- covery and data mining. [ s. 1. ] : [ s. n. ] ,2008:339-342.
  • 3Shi Chunlei, Jin Longxu, Zhang Ke. Face detection based on skin color segmentation and AdaBoost algorithm [ C ]//Pro- ceedings of 2011 3rd IEEE international conference on infor- mation management and engineering. Zhengzhou : IEEE ,2011.
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  • 7韩静亮,赵曦,赵群飞,施鹏飞.基于迭代多级中值滤波的人脸美化算法[J].计算机应用与软件,2010,27(5):227-229. 被引量:6
  • 8李群,张奇志,周亚丽.基于颜色特征的人脸检测方法[J].北京信息科技大学学报(自然科学版),2012,27(2):73-77. 被引量:1
  • 9Pouya Ghofrani,Zahra Neshat,Hassan Aghaeinia.Labeling Algorithm for Face Detection Using Skin and Hair Characteristics[J].Journal of Electronic Science and Technology,2012,10(2):135-141. 被引量:1

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