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首页> 外文期刊>Journal of structural geology >Comparative testing of ellipse-fitting algorithms: implications for analysis of strain and curvature
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Comparative testing of ellipse-fitting algorithms: implications for analysis of strain and curvature

机译:椭圆拟合算法的比较测试:应变和曲率分析的含义

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摘要

Several types of geological problem involve fitting an ellipse to sparse data in order to define a property such as strain or curvature. The sensitivity of ellipse-fitting algorithms to noise in input geological data is often poorly documented. Here we compare the performance of some well-known approaches to this problem in geology against each other and an algorithm developed for machine vision. The specific methods tested here are an analytical method, a Mohr diagram method, two least squares methods and a constrained ellipse approach. The algorithms were tested on artificial datasets of known elliptical and noise properties. These results allow the selection of an ellipse fitting method in a variety of geological applications and also allow an assessment of the absolute and relative accuracy of a chosen method for various combinations of sample numbers and noise levels. For the most accurate semi axis magnitude and orientation estimates with five or more input data, the 'mean object' least squares approach is recommended. However, the other least squares method also yields good results and is also suitable for three or four data points. Where curvature data is being assessed, the least squares method is preferred as it can handle negative principal curvature values.
机译:几种类型的地质问题涉及将椭圆拟合为稀疏数据,以便定义诸如应变或曲率的属性。椭圆拟合算法对输入地质数据中的噪声的敏感性通常很难得到证明。在这里,我们比较了一些解决地质问题的著名方法的性能,并比较了针对机器视觉开发的算法。这里测试的特定方法是分析方法,莫尔图方法,两个最小二乘法和约束椭圆方法。该算法在已知椭圆和噪声特性的人工数据集上进行了测试。这些结果允许在各种地质应用中选择椭圆拟合方法,并且还允许针对样本数量和噪声水平的各种组合评估所选方法的绝对和相对精度。对于具有五个或更多输入数据的最准确的半轴幅度和方向估计,建议使用“平均对象”最小二乘法。但是,其他最小二乘法也能产生良好的结果,并且也适用于三个或四个数据点。在评估曲率数据的地方,首选最小二乘法,因为它可以处理负的主曲率值。

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