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Face Recognition Robust to Head Pose from One Sample Image

机译:人脸识别功能强大,可从一个样本图像构成头部姿势

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Most face recognition systems only work well under quite constrained environments. In particular, the illumination conditions, facial expressions and head pose must be tightly controlled for good recognition performance. In 2004, we proposed a new face recognition algorithm, Adaptive Principal Component Analysis (APCA) [4], which performs well against both lighting variation and expression change. But like other eigenface-derived face recognition algorithms, APCA only performs well with frontal face images. The work presented in this paper is an extension of our previous work to also accommodate variations in head pose. Following the approach of Cootes et al, we develop a face model and a rotation model which can be used to interpret facial features and synthesize realistic frontal face images when given a single novel face image. We use a Viola-Jones based face detector to detect the face in real-time and thus solve the initialization problem for our Active Appearance Model search. Experiments show that our approach can achieve good recognition rates on face images across a wide range of head poses. Indeed recognition rates are improved by up to a factor of 5 compared to standard PCA.
机译:大多数人脸识别系统仅在非常受限的环境下才能很好地工作。特别是,必须严格控制照明条件,面部表情和头部姿势,以实现良好的识别性能。 2004年,我们提出了一种新的面部识别算法,即自适应主成分分析(APCA)[4],该算法在应对光照变化和表情变化方面均表现出色。但是,与其他基于本征人脸的人脸识别算法一样,APCA仅对正面人脸图像表现良好。本文介绍的工作是对我们以前工作的扩展,也可以适应头部姿势的变化。遵循Cootes等人的方法,我们开发了一个面部模型和一个旋转模型,当给定一个新颖的面部图像时,它们可用于解释面部特征并合成逼真的正面面部图像。我们使用基于Viola-Jones的面部检测器实时检测面部,从而解决了Active Appearance Model搜索的初始化问题。实验表明,我们的方法可以在各种头部姿势下对面部图像实现良好的识别率。实际上,与标准PCA相比,识别率最多提高了5倍。

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