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Non-linear Least Squares Ellipse Fitting Using The Genetic Algorithm With Applications To Strain Analysis

机译:遗传算法在非线性最小二乘椭圆拟合中的应用

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Several methods of strain estimation require the best-fit ellipse through a set of points either for defining elliptical shapes of distorted objects, and/or for tracing the finite strain ellipse. Fitting an ellipse to scattered points by solving a least squares problem can involve a linear as well as non-linear formulation. This article outlines both approaches and their relative merits and limitations and, proposes a simple yet powerful non-linear method of solution utilizing the genetic algorithm. Algebraic methods solve the linear least squares problem, and are relatively straightforward and fast. However, depending upon the type of constraints used, different algebraic methods will yield somewhat different results. More importantly, algebraic methods have an inherent curvature bias - data corrupted by the same amount of noise will misfit unequally at different curvatures. The genetic algorithm method we propose uses geometric as opposed to algebraic fitting. This is computationally more intensive, but it provides scope for placing visually apparent constraints on ellipse parameter estimation and is free from curvature bias. Algebraic and geometric approaches are compared critically with the help of a few synthetic and natural examples for strain estimation in rocks. The genetic algorithm almost always produces results with lower misfit when dealing with noisy data and more importantly, yields closer estimates to the true values.
机译:几种应变估计方法需要通过一组点的最佳拟合椭圆,以定义变形对象的椭圆形状和/或跟踪有限应变椭圆。通过解决最小二乘问题将椭圆拟合到分散点可能涉及线性和非线性公式。本文概述了这两种方法及其相对优缺点,并提出了一种利用遗传算法的简单而强大的非线性求解方法。代数方法可以解决线性最小二乘问题,并且相对简单快捷。但是,根据所使用约束的类型,不同的代数方法将产生一些不同的结果。更重要的是,代数方法具有固有的曲率偏差-被相同数量的噪声破坏的数据将在不同的曲率下不均等地失配。我们提出的遗传算法方法使用几何而不是代数拟合。这在计算上更加密集,但是它为在椭圆参数估计上放置视觉上明显的约束提供了范围,并且没有曲率偏差。借助一些合成的和自然的示例,可以对代数和几何方法进行严格的比较,以估算岩石中的应变。当处理嘈杂的数据时,遗传算法几乎总是产生不匹配的结果,更重要的是,得出的估计值更接近真实值。

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