首页> 外文期刊>Journal of Computing and Information Science in Engineering >Theory and Algorithms for Weighted Total Least-Squares Fitting of Lines, Planes, and Parallel Planes to Support Tolerancing Standards
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Theory and Algorithms for Weighted Total Least-Squares Fitting of Lines, Planes, and Parallel Planes to Support Tolerancing Standards

机译:线,平面和平行平面的加权总最小二乘拟合以支持公差标准的理论和算法

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摘要

We present the theory and algorithms for fitting a line, a plane, two parallel planes (corresponding to a slot or a slab), or many parallel planes in a total (orthogonal) least-squares sense to coordinate data that is weighted. Each of these problems is reduced to a simple 3×3 matrix eigenvalue/eigenvector problem or an equivalent singular value decomposition problem, which can be solved using reliable and readily available commercial software. These methods were numerically verified by comparing them with brute-force minimization searches. We demonstrate the need for such weighted total least-squares fitting in coordinate metrology to support new and emerging tolerancing standards, for instance, ISO 14405-1:2010. The widespread practice of unweighted fitting works well enough when point sampling is controlled and can be made uniform (e.g., using a discrete point contact coordinate measuring machine). However, we show by example that nonuni-formly sampled points (arising from many new measurement technologies) coupled with unweighted least-squares fitting can lead to erroneous results. When needed, the algorithms presented also solve the unweighted cases simply by assigning the value one to each weight. We additionally prove convergence from the discrete to continuous cases of least-squares fitting as the point sampling becomes dense.
机译:我们介绍了在总(正交)最小二乘意义上拟合一条线,一个平面,两个平行平面(对应于一个缝隙或一个平板)或许多平行平面的理论和算法,以协调加权数据。这些问题中的每一个都简化为简单的3×3矩阵特征值/特征向量问题或等效的奇异值分解问题,可以使用可靠且易于使用的商业软件来解决。通过与蛮力最小化搜索进行比较,对这些方法进行了数值验证。我们证明了需要这样的加权总最小二乘拟合来协调坐标计量,以支持新的和新兴的公差标准,例如ISO 14405-1:2010。当控制点采样并且可以使其统一(例如使用离散点接触坐标测量机)时,无加权拟合的广泛实践效果很好。但是,我们通过示例显示,非均匀采样点(源自许多新的测量技术)加上未加权的最小二乘拟合可能会导致错误的结果。必要时,提出的算法还可以简单地通过为每个权重分配一个值来解决未加权的情况。我们还证明了随着点采样变得密集,从最小二乘拟合的离散情况到连续情况的收敛。

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