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Surface Fitting for Quasi Scattered Data from Coordinate Measuring Systems

机译:来自坐标测量系统的准散射数据的表面拟合

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摘要

Non-uniform rational B-spline (NURBS) surface fitting from data points is wildly used in the fields of computer aided design (CAD), medical imaging, cultural relic representation and object-shape detection. Usually, the measured data acquired from coordinate measuring systems is neither gridded nor completely scattered. The distribution of this kind of data is scattered in physical space, but the data points are stored in a way consistent with the order of measurement, so it is named quasi scattered data in this paper. Therefore they can be organized into rows easily but the number of points in each row is random. In order to overcome the difficulty of surface fitting from this kind of data, a new method based on resampling is proposed. It consists of three major steps: (1) NURBS curve fitting for each row, (2) resampling on the fitted curve and (3) surface fitting from the resampled data. Iterative projection optimization scheme is applied in the first and third step to yield advisable parameterization and reduce the time cost of projection. A resampling approach based on parameters, local peaks and contour curvature is proposed to overcome the problems of nodes redundancy and high time consumption in the fitting of this kind of scattered data. Numerical experiments are conducted with both simulation and practical data, and the results show that the proposed method is fast, effective and robust. What’s more, by analyzing the fitting results acquired form data with different degrees of scatterness it can be demonstrated that the error introduced by resampling is negligible and therefore it is feasible.
机译:来自数据点的非均匀有理B样条(NURBS)表面拟合广泛用于计算机辅助设计(CAD),医学成像,文物表示和物体形状检测等领域。通常,从坐标测量系统获取的测量数据既不会网格化也不会完全分散。这类数据的分布分散在物理空间中,但是数据点的存储方式与测量顺序一致,因此在本文中称为准分散数据。因此,可以轻松地将它们组织成行,但是每行中的点数是随机的。为了克服此类数据进行曲面拟合的困难,提出了一种基于重采样的新方法。它包括三个主要步骤:(1)对每行进行NURBS曲线拟合;(2)对拟合曲线进行重采样;以及(3)根据重采样数据进行曲面拟合。第一步和第三步采用迭代投影优化方案,以产生可取的参数设置并减少投影的时间成本。提出了一种基于参数,局部峰值和轮廓曲率的重采样方法,以克服在拟合这类分散数据时节点冗余和耗时高的问题。通过仿真和实际数据进行了数值实验,结果表明该方法快速,有效,鲁棒。此外,通过分析从不同散度的数据获取的拟合结果,可以证明重采样引入的误差可以忽略不计,因此是可行的。

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