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Direct and specific least-square fitting of hyperbolae and ellipses

机译:双曲线和椭圆的直接和特定最小二乘拟合

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A new method based on quadratic constrained least-mean-square fitting to simultaneously determine both the best hyperbolic and elliptical fits to a set of scattered data is presented. Thus a linear solution to the problem of hyperbola-specific fitting is revealed for the first time. Pilu's method to fit an ellipse (with respect to distance) to observed data points is extended to select, without prejudice, both ellipses and hyperbolae as well as their degenerate forms as indicated by optimality with respect to the algebraic distance. This novel method is numerically efficient and is suitable for fitting to dense datasets with low noise. Furthermore, it is deemed highly suited to initialize a better but more computationally costly least-square minimization of orthogonal distance. Moreover, Grass-mannian coordinates of the hyperbolae are introduced, and it is shown how these apply to fitting a prototypical hyperbola. Two new theorems on fitting hyperbolae are presented together with rigorous proofs. A new method to determine the spatial uncertainty of the fit from the eigen or singular values is derived and used as an indicator for the quality of fit. All proposed methods are verified using numerical simulation, and working MATLAB~(~R) programs for the implementation are made available. Further, an application of the methods to automatic industrial inspection is presented.
机译:提出了一种基于二次约束最小均方拟合的方法,可以同时确定对一组分散数据的最佳双曲线和椭圆拟合。因此,首次揭示了双曲线特定拟合问题的线性解决方案。皮卢(Pilu)将椭圆(相对于距离)拟合到观测数据点的方法被扩展为选择椭圆和双曲线,以及它们的简并形式(相对于代数距离的最适性),而不会有偏见。这种新颖的方法在数值上是有效的,并且适合于拟合低噪声的密集数据集。此外,认为非常适合初始化正交距离的更好的,但计算量更大的最小平方最小化。此外,还介绍了双曲线的草曼坐标,并说明了它们如何适用于拟合原型双曲线。提出了关于拟合双曲线的两个新定理,并给出了严格的证明。推导了一种从特征值或奇异值确定拟合的空间不确定性的新方法,并将其用作拟合质量的指标。所有提出的方法都通过数值模拟进行了验证,并为实现提供了可用的MATLAB〜(〜R)程序。此外,提出了该方法在自动工业检查中的应用。

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