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Shape-aware surface reconstruction from sparse 3D point-clouds

机译:稀疏3D点云的形状感知表面重建

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摘要

The reconstruction of an object's shape or surface from a set of 3D points plays an important role in medical image analysis, e.g. in anatomy reconstruction from tomographic measurements or in the process of aligning intra-operative navigation and preoperative planning data. In such scenarios, one usually has to deal with sparse data, which significantly aggravates the problem of reconstruction. However, medical applications often provide contextual information about the 3D point data that allow to incorporate prior knowledge about the shape that is to be reconstructed. To this end, we propose the use of a statistical shape model (SSM) as a prior for surface reconstruction. The SSM is represented by a point distribution model (PDM), which is associated with a surface mesh. Using the shape distribution that is modelled by the PDM, we formulate the problem of surface reconstruction from a probabilistic perspe.ctive based on a Gaussian Mixture Model (GMM). In order to do so, the given points are interpreted as samples of the GMM. By using mixture components with anisotropic covariances that are "oriented" according to the surface normals at the PDM points, a surface-based fitting is accomplished. Estimating the parameters of the GMM in a maximum a posteriori manner yields the reconstruction of the surface from the given data points. We compare our method to the extensively used Iterative Closest Points method On several different anatomical datasets/SSMs (brain, femur, tibia, hip, liver) and demonstrate superior accuracy and robustness on sparse data. (C) 2017 Elsevier B.V. All rights reserved.
机译:来自一组3D点的物体形状或表面的重建在医学图像分析中起着重要作用,例如,在解剖学重建中,来自断层测量或在对齐术中导航和术前计划数据的过程中。在这种情况下,人们通常必须处理稀疏数据,这显着加剧了重建问题。然而,医学应用程序通常提供关于3D点数据的上下文信息,允许结合关于要重建的形状的先前知识。为此,我们建议使用统计形状模型(SSM)作为表面重建之前的。 SSM由点分布模型(PDM)表示,该点分布模型(PDM)与表面网格相关联。使用由PDM建模的形状分布,我们根据高斯混合模型(GMM)制定来自概率介绍的表面重建问题。为此,给定点被解释为GMM的样本。通过使用具有“取向”的各向异性考尔的混合物组分根据PDM点的表面法线,完成了基于表面的配件。以最大的后验方式估计GMM的参数产生从给定数据点的表面重建。我们将我们的方法与广泛使用的迭代最接近点法进行了比较了几个不同的解剖数据集/ SSMS(脑,股骨,胫骨,髋关节,肝脏),并在稀疏数据上展示了卓越的准确性和鲁棒性。 (c)2017 Elsevier B.v.保留所有权利。

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