Intrinsic 3D Dynamic Surface Tracking based on Dynamic Ricci Flow and Teichmüller Map.

Xiaokang Yu, Na Lei, Yalin Wang, Xianfeng Gu
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引用次数: 8

Abstract

3D dynamic surface tracking is an important research problem and plays a vital role in many computer vision and medical imaging applications. However, it is still challenging to efficiently register surface sequences which has large deformations and strong noise. In this paper, we propose a novel automatic method for non-rigid 3D dynamic surface tracking with surface Ricci flow and Teichmüller map methods. According to quasi-conformal Teichmüller theory, the Techmüller map minimizes the maximal dilation so that our method is able to automatically register surfaces with large deformations. Besides, the adoption of Delaunay triangulation and quadrilateral meshes makes our method applicable to low quality meshes. In our work, the 3D dynamic surfaces are acquired by a high speed 3D scanner. We first identified sparse surface features using machine learning methods in the texture space. Then we assign landmark features with different curvature settings and the Riemannian metric of the surface is computed by the dynamic Ricci flow method, such that all the curvatures are concentrated on the feature points and the surface is flat everywhere else. The registration among frames is computed by the Teichmüller mappings, which aligns the feature points with least angle distortions. We apply our new method to multiple sequences of 3D facial surfaces with large expression deformations and compare them with two other state-of-the-art tracking methods. The effectiveness of our method is demonstrated by the clearly improved accuracy and efficiency.

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基于动态Ricci流和teichm ller图的内禀三维动态表面跟踪。
三维动态表面跟踪是一个重要的研究问题,在许多计算机视觉和医学成像应用中起着至关重要的作用。然而,对于具有大变形和强噪声的曲面序列,如何有效地进行配准仍然是一个挑战。本文提出了一种基于曲面Ricci流和teichmller映射的非刚性三维动态曲面自动跟踪方法。根据拟共形teichm ller理论,techm ller映射最小化了最大膨胀,因此我们的方法能够自动注册具有大变形的表面。此外,采用Delaunay三角剖分和四边形网格,使得我们的方法适用于低质量的网格。在我们的工作中,三维动态表面是由高速三维扫描仪获得的。我们首先在纹理空间中使用机器学习方法识别稀疏表面特征。然后分配不同曲率设置的地标特征,利用动态Ricci流法计算曲面的黎曼度规,使所有曲率都集中在特征点上,曲面在其他地方都是平坦的。帧之间的配准由teichm ller映射计算,该映射使角度畸变最小的特征点对齐。我们将我们的新方法应用于具有大表情变形的3D面部表面的多个序列,并将它们与其他两种最先进的跟踪方法进行比较。结果表明,该方法的精度和效率均有明显提高。
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