首页> 外文会议>2010 20th International Conference on Pattern Recognition >Fusion of an Isometric Deformation Modeling Approach Using Spectral Decomposition and a Region-Based Approach Using ICP for Expression-Invariant 3D Face Recognition
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Fusion of an Isometric Deformation Modeling Approach Using Spectral Decomposition and a Region-Based Approach Using ICP for Expression-Invariant 3D Face Recognition

机译:等轴测变形建模方法与光谱分解和基于区域的方法基于ICP的3D人脸识别的融合

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The recognition of faces under varying expressions is one of the current challenges in the face recognition community. In this paper, we propose a method fusing different complementary approaches each dealing with expression variations. The first approach uses an isometric deformation model and is based on the largest singular values of the geodesic distance matrix as an expression-invariant shape descriptor. The second approach performs recognition on the more rigid parts of the face that are less affected by expression variations. Several fusion techniques are examined for combining the approaches. The presented method is validated on a subset of 900 faces of the BU-3DFE face database resulting in an equal error rate of 5.85% for the verification scenario and a rank 1 recognition rate of 94.48% for the identification scenario using the sum rule as fusion technique. This result outperforms other 3D expression-invariant face recognition methods on the same database.
机译:不同表情下的面部识别是面部识别界当前的挑战之一。在本文中,我们提出了一种融合不同互补方法的方法,每种方法都处理表达式变化。第一种方法使用等距变形模型,并且基于测地距离矩阵的最大奇异值作为表达式不变的形状描述符。第二种方法是在面部表情较硬的部分上进行识别,这些部分受表情变化的影响较小。研究了几种融合技术以结合这些方法。所提出的方法在BU-3DFE人脸数据库的900个人脸的子集上进行了验证,使用求和规则作为融合,验证场景的同等错误率为5.85%,识别场景的等位1识别率为94.48%。技术。该结果优于同一数据库上其他3D表情不变的面部识别方法。

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