首页> 外文会议>International Conference on Scale-Space and PDE Methods in Computer Vision; 20050407-09; Hofgeismar(DE) >Sparse Finite Element Level-Sets for Anisotropi Boundary Detection in 3D Images
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Sparse Finite Element Level-Sets for Anisotropi Boundary Detection in 3D Images

机译:用于3D图像各向异性边界的稀疏有限元水平集

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Level-Set methods have been successfully applied to 2D and 3D boundary detection problems. The geodesic active contour model has been particularly successful. Several algorithms for the discretisation have been proposed and the banded approach has been used to improve efficiency, which is crucial in 3D boundary detection. In this paper we propose a new scheme to numerically represent and evolve surfaces in 3D. With the new scheme, efficiency and accuracy are further improved. For the representation, space is partitioned into tetrahedra and finite elements are used to define the level-set function. Extreme sparsity is obtained by maintaining data only for tetrahedra that contain the zero level-set. We formulate the evolution PDE in weak form and incorporate a normalisation term. We obtain a stable scheme with consistent sub-grid accuracy without having to rely on any re-initialisation procedure. Boundary detection is performed using an anisotropic extension of the isotropic geodesic model. With the sparse representation, the anisotropic model is computationally feasible. We present experimental results on volumetric data sets including images with a significant amount of noise.
机译:水平集方法已成功应用于2D和3D边界检测问题。测地线活动轮廓模型特别成功。已经提出了用于离散化的几种算法,并且已使用带状方法来提高效率,这对于3D边界检测至关重要。在本文中,我们提出了一种新的方案来数字表示和演化3D表面。通过新方案,效率和准确性进一步提高。为了表示,将空间划分为四面体,并使用有限元定义水平集函数。通过仅维护包含零水平集的四面体的数据可获得极度稀疏性。我们以弱形式制定演化PDE,并纳入归一化术语。我们获得了稳定的方案,该方案具有一致的子网格精度,而不必依赖任何重新初始化过程。使用各向同性测地线模型的各向异性扩展来执行边界检测。利用稀疏表示,各向异性模型在计算上是可行的。我们在体积数据集(包括具有大量噪声的图像)上展示了实验结果。

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