用参数分解方法拟合三维圆和椭圆

Xiaoyi Jiang, D. Cheng
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引用次数: 13

摘要

许多优化过程遇到的问题是如何有效地达到全局最小值或接近全局最小值。传统的方法如Levenberg-Marquardt算法和信任域方法也面临陷入局部极小值的问题。另一方面,一些算法如模拟退火和遗传算法试图找到全局最小值,但它们大多耗时。如果没有良好的初始化,许多优化方法无法保证全局最小结果。提出了一种新的三维圆椭圆拟合方法,减轻了优化问题。它不仅可以提高得到全局最小值的概率,而且可以减少计算时间。在之前工作的基础上,我们将参数分解为两部分:一部分可以用解析法或直接法求解,另一部分必须用迭代法求解。通过该方案,简化了优化空间的地形,从而减少了局部极小值的数量和计算时间。实验结果表明,该方法与传统方法具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fitting of 3D circles and ellipses using a parameter decomposition approach
Many optimization processes encounter a problem in efficiently reaching a global minimum or a near global minimum. Traditional methods such as Levenberg-Marquardt algorithm and trust-region method face the problems of dropping into local minima as well. On the other hand, some algorithms such as simulated annealing and genetic algorithm try to find a global minimum but they are mostly time-consuming. Without a good initialization, many optimization methods are unable to guarantee a global minimum result. We address a novel method in 3D circle and ellipse fitting, which alleviates the optimization problem. It can not only increase the probability of getting in global minima but also reduce the computation time. Based on our previous work, we decompose the parameters into two parts: one part of parameters can be solved by an analytic or a direct method and another part has to be solved by an iterative procedure. Via this scheme, the topography of optimization space is simplified and therefore, we reduce the number of local minima and the computation time. We experimentally compare our method with the traditional ones and show superior performance.
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