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Evaluation of clustering algorithms for the analysis of thermal NDT inspections

机译:评估用于热NDT检查分析的聚类算法

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Infrared thermography is a well-known technique for the Nondestructive Testing (NDT) of industrial components. Typically, the raw results of a thermal inspection are processed with an algorithm to enhance the defect detectability and then analyzed by an expert. A challenging point of this workflow is the final step, as the assessment made by the operator could be biased or subjective. To tackle this issue, clustering algorithms could be used to define, in an unsupervised manner, whether a region under inspection is defective or sound. In this work, a steel sample with flat bottom-hole defect is investigated in a Flash Thermography setup. The recorded thermal sequence is then analyzed with a clustering algorithm (k-means). The algorithm is applied varying different parameters and assessing, for each scenario, the performance of the clustering in terms of defect detection, quantified through specificity and sensitivity.
机译:红外热成像技术是用于工业组件无损检测(NDT)的一种众所周知的技术。通常,热检查的原始结果将通过算法处理以提高缺陷检测能力,然后由专家进行分析。该工作流程的一个挑战性点是最后一步,因为操作员进行的评估可能有偏差或主观。为了解决这个问题,可以使用聚类算法以无监督的方式定义被检查区域是否有缺陷或有声。在这项工作中,在快速热成像设置中研究了具有平坦底孔缺陷的钢样品。然后使用聚类算法(k均值)分析记录的热序列。应用该算法可改变不同的参数,并针对每种情况评估通过缺陷检测(通过特异性和敏感性进行量化)的聚类性能。

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