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Fuzzy C-mean classification for corrosion evolution of steel images

机译:钢图像腐蚀演变的模糊C均值分类

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摘要

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在使用寿命期间容易生锈。因此,需要评估表面以避免潜在的灾难。人们对使用补丁修复策略以最大程度地减少项目成本非常感兴趣。但是,要对此类维修的使用寿命长久充满信心地实施此类策略,必须对现有涂层和钢基材的状况进行准确的定量和分类,这一点至关重要。本文介绍了模糊集理论根据钢锈时间对钢表面分类的应用。我们提出一种使用模糊C均值(FCM)算法获得图像聚类的半自动技术,并分析两种数据以研究分类性能。首先,我们调查未使用任何预处理方法和邻域像素的原始图像像素的使用。其次,我们将高斯噪声应用于具有不同标准偏差的图像,以研究FCM方法对高斯噪声的容忍度。嘈杂的图像模拟了在典型的现场采集过程中,由于天气或钢表面上的铁锈沉积而可能引起的图像扰动

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