Abstract

This paper presents two algorithms, based on conformal geometry, for the multi-scale representations of geometric shapes and surface morphing. A multi-scale surface representation aims to describe a 3D shape at different levels of geometric detail, which allows analyzing or editing surfaces at the global or local scales effectively. Surface morphing refers to the process of interpolating between two geometric shapes, which has been widely applied to estimate or analyze deformations in computer graphics, computer vision and medical imaging. In this work, we propose two geometric models for surface morphing and multi-scale representation for 3D surfaces. The basic idea is to represent a 3D surface by its mean curvature function, H, and conformal factor function λ, which uniquely determine the geometry of the surface according to Riemann surface theory. Once we have the (λ, H) parameterization of the surface, post-processing of the surface can be done directly on the conformal parameter domain. In particular, the problem of multi-scale representations of shapes can be reduced to the signal filtering on the λ and H parameters. On the other hand, the surface morphing problem can be transformed to an interpolation process of two sets of (λ, H) parameters. We test the proposed algorithms on 3D human face data and MRI-derived brain surfaces. Experimental results show that our proposed methods can effectively obtain multi-scale surface representations and give natural surface morphing results.

Highlights

  • Mathematical geometry processing is an active research field and has found important applications in different areas, such as in computer vision, computer graphics and medical imaging

  • Surface morphing refers to the process of interpolating between two geometric shapes, which has been widely applied to estimate or analyze deformations in computer graphics, computer vision and medical imaging

  • Throughout this paper, we propose two geometric models for surface morphing and multi-scale representations for 3D surfaces using conformal geometry

Read more

Summary

Introduction

Mathematical geometry processing is an active research field and has found important applications in different areas, such as in computer vision, computer graphics and medical imaging. In medical imaging, extracting feature landmarks from anatomical structures using different geometric quantities, such as curvatures, are important. With the multi-scale representations of surfaces, one can obtain an approximated registration at the global scale and refine the registration at the local scale This significantly speeds up of the computation and improves the accuracy of registering localized geometric details on surfaces [6,7]. Surface morphing is another important topic in computer vision. Surface morphing refers to the process of interpolating between two geometric shapes, which has been widely applied to estimate or analyze deformations in computer graphics, computer vision and medical imaging. Developing effective algorithms to compute multi-scale representations of 3D surfaces and model shape evolution between surfaces are of utmost important

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call