基于遗传算法的高性能几何原语检测

Yaodong Wang, N. Funakubo
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引用次数: 1

摘要

本文提出了利用遗传算法(GA)实现几何原语高性能检测的新方法。首先,我们描述了基于最小子集和改进几何基元适应度函数的检测算法。其次,分析了数字图像中最小子集的结构及其概率特性,通过减少无效部分来提高原始检测的概率;第三,我们提到了亚像素测量技术,该技术使边缘定位高度精确,从而通过用基元的子像素替换最小子集来提高基元的精度。最后,我们提出了一种利用等效基因同时检测多个原语的方法,等效基因被视为原语上的点集;它具有观察收敛性、促进收敛性、确认收敛性和维持多亚种群的优良功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-performance of geometric primitives detection usinig genetic algorithm
In this paper, we present some new methods for high performance of geometric primitives detection using a genetic algorithm (GA). At first, we describe the detection algorithm based on minimal subset and improvement of fitness function of geometric primitives. Secondly, we analyze the structure of minimal subsets and its probability properties in a digital image, and we improved the probability of primitive detection by reducing the invalid parts. Thirdly, we mention the subpixel measurement technique that makes edge location highly accurate, thereby increasing the accuracy of primitives by replacing the minimal subset with their subpixels. Finally, we present a method to simultaneously detect several primitives using the equivalence genes which are regarded as the set of points on a primitive; it has some excellent functions such as observation of convergence, promotion of convergence, confirmation of convergence and maintenance of multiple subpopulations.
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