Erazo-Aux Jorge, Loaiza-Correa H, Restrepo-Giron A D
Appl Opt. 2019 May 1;58(13):3620-3629. doi: 10.1364/AO.58.003620.
This paper presents a new methodology for the automatic detection of defective regions of interest (d-ROI) in thermal images of composite materials. The images are acquired with pulsed thermography, and local histograms of oriented gradients are obtained by thermogram processing. This information is analyzed using a simple strategy to differentiate the material background from the defective areas. The procedure is independent of image contrast or enhancement; it does not require analysis of a complete sequence of images, nor does it involve heat transfer models or the extraction of nonuniform heating information. The methodology is tested with synthetic images of a carbon fiber-reinforced plastic sample, containing diameter/depth ratio defects with different values (between 150 and 0.56). The performance of the d-ROI detection method is validated using the area under the ROC curve (AUC) measure, generally obtaining a maximum average value of 0.949 with variations between 0.891 and 0.993 for all the defective depth and size conditions studied. In addition, this method is highly robust when detecting defects in 48.84% of the total number of images, as determined by the sequences analyzed with AUC values higher than 0.95. Outside the high detectability index range, the AUC performance increases abruptly and decays gradually. Recent literature proposes automatic detection of defects in thermograms yielding similar performances to those obtained with the proposed method; however, they require preprocessing of all the thermograms to improve image contrast and visibility and to attenuate the adverse effect of nonuniform heating, which affects the implementation complexity and the computational cost.
本文提出了一种用于自动检测复合材料热图像中缺陷感兴趣区域(d - ROI)的新方法。图像通过脉冲热成像采集,并通过热图处理获得定向梯度的局部直方图。利用一种简单策略分析此信息,以区分材料背景和缺陷区域。该过程与图像对比度或增强无关;它不需要分析完整的图像序列,也不涉及传热模型或提取不均匀加热信息。该方法用碳纤维增强塑料样品的合成图像进行测试,这些图像包含不同值(介于150和0.56之间)的直径/深度比缺陷。使用ROC曲线下面积(AUC)度量来验证d - ROI检测方法的性能,在所有研究的缺陷深度和尺寸条件下,通常获得的最大平均值为0.949,变化范围在0.891至0.993之间。此外,根据AUC值高于0.95分析的序列确定,该方法在检测48.84%的图像中的缺陷时具有高度鲁棒性。在高检测指数范围之外,AUC性能急剧上升并逐渐下降。最近的文献提出了对热图中缺陷的自动检测,其性能与所提出的方法相似;然而,它们需要对所有热图进行预处理,以提高图像对比度和可见性,并减弱不均匀加热的不利影响,这会影响实现复杂性和计算成本。