StretchDenoise: Parametric Curve Reconstruction with Guarantees by Separating Connectivity from Residual Uncertainty of Samples

S. Ohrhallinger, M. Wimmer
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引用次数: 6

Abstract

We reconstruct a closed denoised curve from an unstructured and highly noisy 2D point cloud. Our proposed method uses a two- pass approach: Previously recovered manifold connectivity is used for ordering noisy samples along this manifold and express these as residuals in order to enable parametric denoising. This separates recovering low-frequency features from denoising high frequencies, which avoids over-smoothing. The noise probability density functions (PDFs) at samples are either taken from sensor noise models or from estimates of the connectivity recovered in the first pass. The output curve balances the signed distances (inside/outside) to the samples. Additionally, the angles between edges of the polygon representing the connectivity become minimized in the least-square sense. The movement of the polygon's vertices is restricted to their noise extent, i.e., a cut-off distance corresponding to a maximum variance of the PDFs. We approximate the resulting optimization model, which consists of higher-order functions, by a linear model with good correspondence. Our algorithm is parameter-free and operates fast on the local neighborhoods determined by the connectivity. We augment a least-squares solver constrained by a linear system to also handle bounds. This enables us to guarantee stochastic error bounds for sampled curves corrupted by noise, e.g., silhouettes from sensed data, and we improve on the reconstruction error from ground truth. Open source to reproduce figures and tables in this paper is available at: this https URL
stretch降噪:通过分离样本的连通性和残差不确定性来保证参数曲线重构
我们从一个非结构化和高噪声的二维点云重建一个封闭的去噪曲线。我们提出的方法使用两步方法:先前恢复的流形连通性用于沿该流形排序噪声样本并将其表示为残差以实现参数去噪。这将低频特征的恢复从高频去噪中分离出来,从而避免了过度平滑。样本的噪声概率密度函数(pdf)要么取自传感器噪声模型,要么取自第一次恢复的连通性估计。输出曲线平衡到样本的带符号距离(内部/外部)。此外,在最小二乘意义上,表示连通性的多边形边缘之间的角度变得最小。多边形顶点的移动受限于它们的噪声范围,即与pdf的最大方差相对应的截止距离。我们将得到的由高阶函数组成的优化模型近似为具有良好对应关系的线性模型。我们的算法是无参数的,并且在由连通性决定的局部邻域上快速运行。我们扩充了一个受线性系统约束的最小二乘求解器来处理边界。这使我们能够保证受噪声破坏的采样曲线的随机误差范围,例如,来自感测数据的轮廓,并且我们改进了来自地面事实的重建误差。复制本文中的图表和表格的开放源代码可在以下https URL获得
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