Physical Characterization of Materials by Grain Size Measurement Based Micrographic Images LSM-FCM Segmentation

Mohammed Khorchef, N. Ramou, Rabah Abdelkader, Y. Boutiche, N. Chetih
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Abstract

The aim of this work is to create an application that uses the ISO 643:2012 norm for the physical characterization of materials. This application, with its well adapted graphical interface offers the user a better processing of micrographic images, which allows an easy use; it will lead directly to reliable and reproducible results. In this paper, we are interested in determining the mean grain size in material using LSM (the level set method) based on FCM (fuzzy c-means clustering) to get the mean grains size of interest (types of surfaces) and to improve the precision of segmentation with a specified micrographic method. There are two steps in the proposed method. The first step involves using the fuzzy c-means algorithm to generate a clustered image. The second step is based on extracting the grains boundaries by using the appropriate class of the clustered image as an initial condition of the level set method. To achieve this objective, an application has been developed in the OpenCV library to make it easier for the expert to calculate grain sizes.
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基于粒度测量的显微图像LSM-FCM分割的材料物理表征
本工作的目的是创建一个应用程序,该应用程序使用ISO 643:2012材料物理特性规范。该应用程序具有良好的适应图形界面,为用户提供了更好的显微图像处理,这使得易于使用;它将直接导致可靠和可重复的结果。在本文中,我们感兴趣的是使用基于FCM(模糊c均值聚类)的LSM(水平集方法)来确定材料的平均晶粒尺寸,以获得感兴趣的平均晶粒尺寸(表面类型),并使用特定的显微方法提高分割精度。该方法分为两个步骤。第一步是使用模糊c均值算法生成聚类图像。第二步是利用聚类图像的适当类别作为水平集方法的初始条件,提取颗粒边界。为了实现这一目标,在OpenCV库中开发了一个应用程序,使专家更容易计算粒度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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