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Point-Triplet Descriptors for 3D Facial Landmark Localisation

机译:3D面部地标定位的Point-Triplet描述符

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An investigation to localise facial landmarks from 3D images is presented, without using any assumption concerning facial pose. This paper introduces new surface descriptors, which are derived from either unstructured face data, or a radial basis function (RBF) model of the facial surface. Two new variants of feature descriptors are described, generally named as point -- triplet descriptors because they require three vertices to be computed. The first is related to the classical depth map feature, which is referred to as weighted -- interpolated depth map. The second variant of descriptors are derived from an implicit RBF model, they are referred to as surface RBF signature (SRS) features. Both variants of descriptors are able to encode surface information within a triangular region defined by a point -- triplet into a surface signature, which could be useful not only for 3D face processing but also within a number of graph based retrieval applications. These descriptors are embedded into a system designed to localise the nose -- tip and two inner -- eye corners. Landmark localisation performance is reported by computing errors of estimated landmark locations against our respective ground -- truth data from the Face Recognition Grand Challenge (FRGC) database.
机译:提出了对来自3D图像的面部地标的调查,而不使用关于面部姿势的任何假设。本文介绍了新的表面描述符,其源自非结构化面部数据,或面部表面的径向基函数(RBF)模型。描述了两个特征描述符的新变体,通常名为Point - Triplet描述符,因为它们需要计算三个顶点。第一个与经典深度映射特征有关,其被称为加权 - 内插深度图。描述符的第二变型来自隐式RBF模型,它们被称为表面RBF签名(SRS)特征。描述符的两个变体都能够在由点三胶囊定义的三角形区域内的表面信息进行编码到表面签名中,这不仅可以用于3D面部处理,而且可以在基于曲线图中的检索应用中是有用的。这些描述符嵌入到旨在本地化鼻尖和两个内眼角的系统中。通过从面部识别大挑战(FRGC)数据库中,通过计算估计地标位置的估计地标位置的误差来报告地标定位性能。

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