期刊文献+

基于肤色模型和SURF算法的人脸识别研究 被引量:3

Study of Face Recognition Algorithm Combined Skin Color and SURF
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摘要 人脸识别技术是机器人视觉领域研究课题之一,在军事及民用领域应用广泛。目标检测算法中,SURF算法具有精度高、鲁棒性好等优点,然而因其计算的复杂性,实时性并不高。利用人脸肤色特征,提出了一种在肤色模型的基础上结合SURF算法进行人脸识别的方案。阐述了YUV色彩空间模型以及SURF算法对特征点的检测、描述与生成的原理。并论证了YUV色彩空间与SURF算法相结合的理论原理。 The technology of face recognition is a research subject in the filed of robot visual,which has been widely used in mil- itary and civilian.Belong to the target detection algorithms,despite the advantage of its high accuracy and robustness,SURF algorithm does not perform well in real-time because of its computational complexity.This paper proposes the face recogni- tion program,which is based on the skin color model and takes advantage of SURF algorithm.YUV color space mode is de- scribed in the dissertation as well as the principle of how SURF detect,describe and generate the characteristic points.Be- sides,the theory of how YUV color space combines with SURF algorithm are demonstrated in this dissertation.
出处 《工业控制计算机》 2014年第2期48-50,共3页 Industrial Control Computer
关键词 人脸识别 SURF算法 肤色模型 YUV色彩空间 face recognition,SURF,skin color,YUV colorspace
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参考文献10

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共引文献30

同被引文献33

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