基于遗传算法的金属断裂微米级图像分析参数调整

M. Mizoguchi, K. Obata, Y. Kato, K. Ogata
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引用次数: 2

摘要

脆性断裂是金属断裂的一种,伴随金属很少或没有塑性变形,断裂的起源是识别其原因的最重要线索之一,可通过观察表面来定位。在这里,断口学是一个研究领域,通过使用电子显微镜图像来分析断裂机制和/或原因。通过该方法,建立了定位发源的方法。然而,它们主要是通过目视观察完成的。在MHS2007上,我们提出了一种方法,通过在扫描电子显微镜(SEM)数字图像上引入计算机视觉技术,将其测量精度提高到微米级[1]。然而,有些参数是手动确定的,需要自动化。这是对它的持续研究。本文提出了一种利用遗传算法确定图像分割参数的新方法。通过实验证明了该方案的有效性,并确定了次优参数,以获得最大的解理步数。这些方法有望使非专家也能在微米尺度上准确分析金属断裂。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic algorithm based parameters adjustments for micron-order image analysis of metal fracture
A brittle fracture, which is a kind of metal fractures, accompanies little or no plastic deformations of the metal, The origin of the fracture is one of the most important clues to identify the cause of it, and can be located by observing the surface. Here, fractography is an area of study to analyze fracture mechanisms and/or causes by using electron microscope images. The method to locate the origins has been established through it. However, they have been done mainly by visual observations. At MHS2007, we proposed a method to improve its measurement accuracy to micron order by introducing computer vision techniques on Scanning Electron Microscope, or SEM, digital images [1]. However, some parameters were manually determined and required to be automated. This is a continued research of it. We propose, in this paper, a new method to determine proper parameters for image segmentation using Genetic Algorithms (GAs.) Through experiments, we proved the scheme worked properly, and suboptimal parameters were determined so that the greatest number of cleavage steps was obtained. It is expected that these proposed methods will enable non-experts to analyze metal fractures accurately in micron scale.
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