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Large scale face identification by combined iconic features and 3D joint invariant signatures

机译:结合标志性特征和3D联合不变特征的大规模人脸识别

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In this paper, we present a 2D/3D multimodal face identification system. A set of iconic fiducial points and descriptors is first extracted from the images of the faces and a preliminary correspondence between the points is established on the basis of the descriptor content. Subsequently, the points are mapped on the scans and used to calculate 3D joint differential invariant vectors that define a signature of the face. Since a correspondence between the invariants is inherited from the 2D feature point matching, the signatures of the faces can be efficiently compared by evaluating the distance between corresponding vectors, thus validating the 2D matching hypothesis. This methodology guarantees an effective and fast alignment of the 3D scans, avoids iterative registration procedures and provides a simple similarity measure for face identification. Extensive tests were carried out on the FRGCv2 and on the Bosphorus databases, which both contain 3D and texture information of faces. Results show that the method is robust to expressions provided the images are of good quality, and that it is particularly suited to identification tasks in the cases of medium to large databases with multiple gallery enrolment. Indeed, in these scenarios, the performance was superior or comparable to state of the art methods, with execution times often faster by several orders of magnitude. (C) 2016 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种2D / 3D多模式人脸识别系统。首先从面部图像中提取出一组标志性基准点和描述符,并根据描述符内容建立这些点之间的初步对应关系。随后,将这些点映射到扫描上,并用于计算定义面部特征的3D关节微分不变矢量。由于不变量之间的对应关系是从2D特征点匹配继承的,因此可以通过评估相应矢量之间的距离来有效地比较人脸的签名,从而验证2D匹配假设。这种方法可确保3D扫描的有效和快速对齐,避免重复的注册过程,并为面部识别提供简单的相似性度量。在FRGCv2和Bosphorus数据库上进行了广泛的测试,这些数据库都包含3D和面部纹理信息。结果表明,只要图像质量良好,该方法对于表达式是鲁棒的,并且它特别适合于具有多个画廊注册的中型到大型数据库的识别任务。的确,在这些情况下,性能优于或等同于现有技术,执行时间通常快几个数量级。 (C)2016 Elsevier B.V.保留所有权利。

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