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Intelligent infrared thermography inspection for subsurface defects

机译:智能红外热像仪检查表面缺陷

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Composite structures are subjected to internal defects and damages such as delamination and voids, rendering visual inspection techniques ineffective. Due to the benefits of non-contact and large area inspection, active infrared thermography (AIT) is gaining popularity to identify, localize and evaluate sub-surface defects in composite structures. However, images of defects are not always obvious and interpretation of the data by human inspectors varies among individuals, and creates differences in the outcome. Therefore, it is highly desired to develop computerized methods so that consistent analysis of results can be automatically obtained. In this work, convolutional neural networks (CNN) and computer vision were employed to implement two CNN based models for detecting structural defects in samples made of composite materials. The aim is to integrate such deep learning (DL) models to enable interpretation of thermal images automatically. That requires achieving object detection with high enough accuracy so that they can be used to assist human inspectors. The recent success of DL in computer vision tasks such as face recognition among others motivates us to apply DL for boosting the performance of thermal imaging inspections. DL methods were recently evaluated for defect detection in AIT of carbon fiber reinforced plastic (CFRP) composites with handmade defects2. The input for that framework were thermal images acquired during the cooling down process. In our work, we will apply similar concepts to detect and classify void and delamination defects in composites so as to reduce reporting errors and improve consistency.
机译:复合结构会遭受内部缺陷和损坏,例如分层和空隙,使目视检查技术无效。由于非接触式和大面积检查的优势,主动红外热成像(AIT)在识别,定位和评估复合结构中的亚表面缺陷方面越来越受欢迎。但是,缺陷的图像并不总是很明显,并且人类检查员对数据的解释在各个人之间是不同的,并且会导致结果的差异。因此,迫切需要开发计算机化的方法,以便可以自动获得对结果的一致分析。在这项工作中,使用卷积神经网络(CNN)和计算机视觉来实现两个基于CNN的模型,以检测复合材料制成的样品中的结构缺陷。目的是集成此类深度学习(DL)模型,以自动解释热图像。这就要求以足够高的精度实现物体检测,以便可以将其用于辅助检查人员。 DL在诸如面部识别等计算机视觉任务中的最新成功促使我们将DL应用到可提高热成像检查性能的应用中。最近评估了DL方法在具有手工缺陷的碳纤维增强塑料(CFRP)复合材料的AIT中的缺陷检测2。该框架的输入是在冷却过程中获取的热图像。在我们的工作中,我们将应用类似的概念来检测和分类复合材料中的空隙和分层缺陷,从而减少报告错误并提高一致性。

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