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Fuzzy C-mean classification for corrosion evolution of steel images

机译:模糊C均分类钢图像腐蚀演化

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An unavoidable problem of metal structures is their exposure to rust degradation during their operational life. Thus, the surfaces need to be assessed in order to avoid potential catastrophes. There is considerable interest in the use of patch repair strategies which minimize the project costs. However, to operate such strategies with confidence in the long useful life of the repair, it is essential that the condition of the existing coatings and the steel substrate can be accurately quantified and classified. This paper describes the application of fuzzy set theory for steel surfaces classification according to the steel rust time. We propose a semi-automatic technique to obtain image clustering using the Fuzzy C-means (FCM) algorithm and we analyze two kinds of data to study the classification performance. Firstly, we investigate the use of raw images' pixels without any pre-processing methods and neighborhood pixels. Secondly, we apply Gaussian noise to the images with different standard deviation to study the FCM method tolerance to Gaussian noise. The noisy images simulate the possible perturbations of the images due to the weather or rust deposits in the steel surfaces during typical on-site acquisition procedures
机译:金属结构的一个不可避免的问题是它们的它们的操作寿命期间暴露于锈降解。因此,该表面需要以避免潜在灾难进行评估。有在使用补丁修复策略,尽量减少项目成本相当大的兴趣。然而,操作与维修的使用寿命长信心这种战略,至关重要的是,现有的涂料和钢基材的条件可以准确地定量和分级。本文根据钢锈时间描述了一种用于钢表面的分类模糊集理论的应用。我们提出了一个半自动化技术,使用模糊C均值(FCM)算法来获得图像集群和我们分析两种数据研究分类性能。首先,我们调查没有任何预处理方法和邻里像素使用原始图像像素。其次,我们应用高斯噪声以不同的标准偏差的图像,研究方法FCM耐受性高斯噪声。的噪声图像中典型的现场采集程序模拟的图像的由于在钢表面上的天气或锈沉积的可能扰动

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