使用局部形状字典的3D人脸关键点自动检测

Clement Creusot, Nick E. Pears, J. Austin
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引用次数: 24

摘要

3D表面上的关键点是可以在广泛的3D成像条件下重复提取的点。它们在许多3D形状处理应用中使用,例如,在一对要匹配的表面上建立一组初始对应。通常,关键点是使用3D表面上函数的极值来提取的,例如高斯曲率的描述符映射。这种方法对鼻尖等突出部位效果很好,但不能用于其他不太明显的局部形状。在本文中,我们提出了一种自动检测3D面部关键点的方法,其中这些关键点在局部与先前学习的一组形状相似,构成了一个“局部形状字典”。局部形状是在一组14个手动放置在人脸上的地标位置上学习的。局部形状由一组在一定范围内计算的10个形状描述符来表征。对于每个地标,具有关联关键点检测的人脸网格比例被用作性能指标。在FRGC v2数据库中测量提取关键点的可重复性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Keypoint Detection on 3D Faces Using a Dictionary of Local Shapes
Keypoints on 3D surfaces are points that can be extracted repeatably over a wide range of 3D imaging conditions. They are used in many 3D shape processing applications, for example, to establish a set of initial correspondences across a pair of surfaces to be matched. Typically, keypoints are extracted using extremal values of a function over the 3D surface, such as the descriptor map for Gaussian curvature. That approach works well for salient points, such as the nose-tip, but can not be used with other less pronounced local shapes. In this paper, we present an automatic method to detect keypoints on 3D faces, where these keypoints are locally similar to a set of previously learnt shapes, constituting a 'local shape dictionary'. The local shapes are learnt at a set of 14 manually-placed landmark positions on the human face. Local shapes are characterised by a set of 10 shape descriptors computed over a range of scales. For each landmark, the proportion of face meshes that have an associated keypoint detection is used as a performance indicator. Repeatability of the extracted keypoints is measured across the FRGC v2 database.
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