使用2.5D形状信息的人脸识别

W. Smith, E. Hancock
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引用次数: 10

摘要

本文研究了一种新的形状-阴影算法所传递的2.5D形状信息是否可以用于光照不敏感的人脸识别。我们提出了一种鲁棒且高效的面部形状-阴影算法,该算法使用主测地线分析来模拟面部表面方向的变化。我们展示了如何使用该算法从真实世界的图像中恢复准确的面部形状和反照率。我们的第二个贡献是在各种识别方法中使用恢复的2.5D形状信息。我们提出了一种新的识别策略,在主要测地线参数的空间中测量相似性。我们还使用恢复的形状信息来生成照明归一化的原型图像,可以对其进行识别。最后,我们表明,从一个单一的输入图像,我们能够产生的基础图像采用了许多众所周知的照明不敏感识别算法。我们还证明了主测地线提供了谐波基图像空间的有效参数化。
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Face Recognition using 2.5D Shape Information
In this paper we investigate whether the 2.5D shape information delivered by a novel shape-from-shading algorithm can be used for illumination insensitive face recognition. We present a robust and efficient facial shape-fromshading algorithm which uses principal geodesic analysis to model the variation in surface orientation across a face. We show how this algorithm can be used to recover accurate facial shape and albedo from real world images. Our second contribution is to use the recovered 2.5D shape information in a variety of recognition methods. We present a novel recognition strategy in which similarity is measured in the space of the principal geodesic parameters. We also use the recovered shape information to generate illumination normalised prototype images on which recognition can be performed. Finally we show that, from a single input image, we are able to generate the basis images employed by a number of well known illumination-insensitive recognition algorithms. We also demonstrate that the principal geodesics provide an efficient parameterisation of the space of harmonic basis images.
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