An Image Processing Approach for Surface Characterization of the Foam Patterns

W. Deabes, Student Member, M. A. Abdelrahman
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引用次数: 1

Abstract

This paper presents a technique for the detection and analysis of the surface characterization of foam patterns used in the lost foam casting process. The number of gaps (defects) among the beads on the pattern surface is used as the quality estimator, since the surface defects are the main cause of micro fatigue cracks in castings. The foam patterns images obtained have poor contrast and contain different objects other than the defects. The proposed image processing and analysis technique consists of three stages. The first stage is enhancement step to remove the undesirable illumination variations by using the bottom-hat filter. In the second stage, morphological operators and multilevel thresholding segmentation technique are applied to detect and segment regions of interest on the surface of the foam pattern. The last step is feature extraction and quantitative analysis. The classification process is done according to the area of the surface defects. All the recognized objects are divided into groups based on the minimum and the maximum defects area. The ratio between the total area in each group and the total surface area of the foam pattern is calculated and presented as a surface quality measure of the foam pattern. Experimental results carried out on different patterns demonstrate that the proposed method is a reliable and accurate technique for detecting the surface defects of the foam pattern.
泡沫图案表面表征的图像处理方法
本文介绍了一种用于消失模铸造过程中泡沫图案表面特征检测和分析的技术。由于表面缺陷是铸件产生微疲劳裂纹的主要原因,因此以铸型表面珠粒间的间隙(缺陷)数量作为质量评价指标。所获得的泡沫图案图像对比度差,并且含有除缺陷以外的不同物体。本文提出的图像处理与分析技术分为三个阶段。第一阶段是增强步骤,利用底帽滤波器去除不需要的光照变化。第二阶段,采用形态学算子和多级阈值分割技术对泡沫图案表面感兴趣的区域进行检测和分割。最后一步是特征提取和定量分析。分类过程是根据表面缺陷的面积进行的。根据缺陷面积的最小值和最大值对识别对象进行分组。计算每组的总面积与泡沫图案的总表面积之间的比率,并将其作为泡沫图案的表面质量度量。实验结果表明,该方法是一种可靠、准确的泡沫图案表面缺陷检测方法。
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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