基于奇异值分解的三维人脸识别等距变形建模

D. Smeets, T. Fabry, Jeroen Hermans, D. Vandermeulen, P. Suetens
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引用次数: 19

摘要

当前,人脸表情的识别是人脸识别领域面临的主要挑战之一。本文提出了一种用等距变形模型处理这些表达式变化的方法。该方法建立在测地线距离矩阵作为三维人脸的表示的基础上。我们将证明最大奇异值集是一个优秀的表达式不变形状描述符。面部比较是通过使用平均归一化曼哈顿距离作为不相似度量来比较它们的形状描述符来进行的。在BU-3DFE人脸数据库的900张人脸子集上进行了验证,验证场景的错误率为13.37%。该结果与在同一数据库上使用等距变形模型的其他三维表情不变人脸识别方法的错误率相当。
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Isometric deformation modeling using singular value decomposition for 3D expression-invariant face recognition
Currently, the recognition of faces under varying expressions is one of the main challenges in the face recognition community. In this paper a method is presented dealing with those expression variations by using an isometric deformation model. The method is built upon the geodesic distance matrix as a representation of the 3D face. We will show that the set of largest singular values is an excellent expression-invariant shape descriptor. Face comparison is performed by comparison of their shape descriptors using the mean normalized Manhattan distance as dissimilarity measure. The presented method is validated on a subset of 900 faces of the BU-3DFE face database resulting in an equal error rate of 13.37% for the verification scenario. This result is comparable with the equal error rates of other 3D expression-invariant face recognition methods using an isometric deformation model on the same database.
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