几何基元的构造拟合与提取

Peter Veelaert
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引用次数: 20

摘要

提出了一种拟合和提取几何基元的构造方法。该方法形式化了计算机视觉中常用的几何基元合并过程。构造拟合从数据的小均匀拟合(称为元素拟合)开始,并使用它们构造更大的均匀拟合。我们提出了正式的结果,包括拟合成本的计算,必须选择元素拟合的方式,以及必须将它们组合起来构建大拟合的方式。用于组合元素配合的规则与使用杆和连接构建刚性机械结构时使用的工程原理非常相似。事实上,我们将通过刚度参数来表征大拟合的质量。由于其自底向上的方法,构造拟合特别适合于在需要灵活系统时提取几何原语。为了说明建设性拟合的主要方面,我们讨论了以下应用:精确的最小二乘中值拟合,具有最小元素拟合数量的线性回归,平面度估计器的设计以计算图像的局部平面度,将数字弧分解为数字直线段,以及圆段的合并。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constructive Fitting and Extraction of Geometric Primitives

We propose a constructive method for fitting and extracting geometric primitives. This method formalizes the merging process of geometric primitives, which is often used in computer vision. Constructive fitting starts from small uniform fits of the data, which are called elemental fits, and uses them to construct larger uniform fits. We present formal results that involve the calculation of the fitting cost, the way in which the elemental fits must be selected, and the way in which they must be combined to construct a large fit. The rules used to combine the elemental fits are very similar to the engineering principles used when building rigid mechanical constructions with rods and joins. In fact, we will characterize the quality of a large fit by a rigidity parameter. Because of its bottom-up approach constructive fitting is particularly well suited for the extraction of geometric primitives when there is a need for a flexible system. To illustrate the main aspects of constructive fitting we discuss the following applications: exact Least Median of Squares fitting, linear regression with a minimal number of elemental fits, the design of a flatness estimator to compute the local flatness of an image, the decomposition of a digital arc into digital straight line segments, and the merging of circle segments.

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