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Robust Fitting of Subdivision Surfaces for Smooth Shape Analysis

机译:细分曲面的稳健拟合,以进行平滑形状分析

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Most shape analysis methods use meshes to discretize the shape and functions on it by piecewise linear functions. Fine meshes are then necessary to represent smooth shapes and compute accurate curvatures or Laplace-Beltrami eigenfunctions at large computational costs. We avoid this bottleneck by representing smooth shapes as subdivision surfaces and using the subdivision scheme to parametrize smooth surface functions with few control parameters. We propose a model to fit a subdivision surface to input samples that, unlike previous methods, can be applied to noisy and partial scans from depth sensors. The task is formulated as an optimization problem with robust data terms and solved with a sequential quadratic program that outperforms the solvers previously used to fit subdivision surfaces to noisy data. Our experiments show that the compression of a subdivision representation does not affect the accuracy of the Laplace-Beltrami operator and allows to compute shape descriptors, geodesics, and shape matchings at a fraction of the computational cost of mesh representations.
机译:大多数形状分析方法都使用网格来通过分段线性函数离散化形状和函数。因此,需要精细的网格来表示平滑的形状并以大的计算成本来计算准确的曲率或Laplace-Beltrami本征函数。我们通过将平滑形状表示为细分曲面并使用细分方案对几乎没有控制参数的平滑曲面函数进行参数化,从而避免了该瓶颈。我们提出了一种适合细分表面以输入样本的模型,与以前的方法不同,该模型可以应用于深度传感器的噪声和部分扫描。该任务被公式化为具有健壮数据项的优化问题,并使用顺序二次程序解决,该程序优于以前用于将细分曲面拟合到嘈杂数据的求解器。我们的实验表明,细分表示的压缩不会影响Laplace-Beltrami算子的准确性,并且允许以网格表示的计算成本的一小部分来计算形状描述符,测地线和形状匹配。

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