Development of Image Process for Crack Identification on Porcelain Insulators

I. Choi, K. Shin, Ho-Sung An, Ja-Bin Koo, Ju-Am Son, Dae-Yeon Lim, Taekeun Oh, Y. Yoon
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Abstract

This study proposes a crack identification algorithm to analyze the surface condition of porcelain insulators and to efficiently visualize cracks. The proposed image processing algorithm for crack identification consists of two primary steps. In the first step, the brightness is eliminated by converting the image to the lab color space. Then, the background is removed by the K-means clustering method. After that, the optimum image treatment is applied using morphological image processing and median filtering to remove unnecessary noise, such as blobs. In the second step, the preprocessed image is converted to grayscale, and any cracks present in the image are identified. Next, the region properties, such as the number of pixels and the ratio of the major to the minor axis, are used to separate the cracks from the noise. Using this image processing algorithm, the precision of crack identification for all the sample images was approximately 80%, and the F1 score was approximately 70. Thus, this method can be helpful for efficient crack monitoring.
瓷绝缘子裂纹图像识别技术的发展
本文提出了一种裂纹识别算法来分析瓷绝缘子的表面状况,并有效地将裂纹可视化。提出的裂纹识别图像处理算法包括两个基本步骤。在第一步中,通过将图像转换为实验室色彩空间来消除亮度。然后,通过k均值聚类方法去除背景。然后,使用形态学图像处理和中值滤波对图像进行优化处理,去除不必要的噪声,如斑点。在第二步中,将预处理后的图像转换为灰度,并识别图像中存在的任何裂纹。接下来,区域属性,如像素的数量和长轴与短轴的比例,被用来从噪声中分离裂缝。使用该图像处理算法,所有样本图像的裂纹识别精度约为80%,F1分约为70分。因此,该方法有助于进行有效的裂缝监测。
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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