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An Automated Pipeline for Dynamic Detection of Sub-Surface Metal Loss Defects across Cold Thermography Images

机译:用于冷热摄影图像的子表面金属损耗缺陷的动态检测自动化管道

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摘要

Utilising cooling stimulation as a thermal excitation means has demonstrated profound capabilities of detecting sub-surface metal loss using thermography. Previously, a prototype mechanism was introduced which accommodates a thermal camera and cooling source and operates in a reciprocating motion scanning the test piece while cold stimulation is in operation. Immediately after that, the camera registers the thermal evolution. However, thermal reflections, non-uniform stimulation and lateral heat diffusions will remain as undesirable phenomena preventing the effective observation of sub-surface defects. This becomes more challenging when there is no prior knowledge of the non-defective area in order to effectively distinguish between defective and non-defective areas. In this work, the previously automated acquisition and processing pipeline is re-designed and optimised for two purposes: 1—Through the previous work, the mentioned pipeline was used to analyse a specific area of the test piece surface in order to reconstruct the reference area and identify defects. In order to expand the application of this device over the entire test area, regardless of its extension, the pipeline is improved in which the final surface image is reconstructed by taking into account multiple segments of the test surface. The previously introduced pre-processing method of Dynamic Reference Reconstruction (DRR) is enhanced by using a more rigorous thresholding procedure. Principal Component Analysis (PCA) is then used in order for feature (DRR images) reduction. 2—The results of PCA on multiple segment images of the test surface revealed different ranges of intensities across each segment image. This potentially could cause mistaken interpretation of the defective and non-defective areas. An automated segmentation method based on Gaussian Mixture Model (GMM) is used to assist the expert user in more effective detection of the defective areas when the non-defective areas are uniformly characterised as background. The final results of GMM have shown not only the capability of accurately detecting subsurface metal loss as low as 37.5% but also the successful detection of defects that were either unidentifiable or invisible in either the original thermal images or their PCA transformed results.
机译:利用冷却刺激作为热敏激发装置,已经表明使用热成像检测亚表面金属损失的深刻能力。以前,引入了一种原型机构,其容纳热相机和冷却源,并在往复运动中操作扫描试验片,而冷刺激正在运行。立即之后,相机寄存热量进化。然而,热反射,不均匀的刺激和横向热漫射将保持不希望的现象,防止有效观察亚表面缺陷。当没有先前的非缺陷区域的先验知识以有效地区分缺陷和非缺陷区域时,这变得更具挑战性。在这项工作中,以前的自动采集和处理管道重新设计和优化了两个目的:1-通过上一项工作,所提到的管道用于分析测试片表面的特定区域,以重建参考区域并识别缺陷。为了在整个测试区域扩展该装置的应用,无论其延伸如何,都改进了流水线,其中通过考虑测试表面的多个段来重建最终表面图像。通过使用更严格的阈值处理程序来提高先前引入了动态参考重建(DRR)的预处理方法。然后使用主成分分析(PCA)以进行特征(DRR图像)减少。图2-测试表面的多个段图像上的PCA结果显示了每个段图像的不同范围。这可能会导致对缺陷和非缺陷区域的误解解释。基于高斯混合模型(GMM)的自动分割方法用于帮助专家用户在非缺陷区域均匀地表征为背景时更有效地检测缺陷区域。 GMM的最终结果表明不仅可以精确地检测地下金属损耗低至37.5%的能力,而且还可以在原始热图像或其PCA转化结果中成功地检测到原始热图像或其PCA转化的结果中的不确定或不可见。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2021(21),14
  • 年度 2021
  • 页码 4811
  • 总页数 22
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:冷活性红外热成像;非破坏性测试;金属损失缺陷检测;图像处理;结构健康监测;基于视觉的传感器;

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