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From local to global analysis of defect detectability in infrared non-destructive testing

机译:从局部到全局分析红外无损检测中的缺陷可检测性

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Several image processing techniques are employed in Infrared Non-Destructive Testing (IRNDT) to enhance defect detectability. To date, there is no adequate global measurement that objectively assesses defect visibility in processed frames. In this work, a Global Signal to Noise Ratio (GSNR) that comprehensively evaluates defect detectability in processed infrared (IR) images is proposed, as well as a defect visibility measure named Infrared Image Quality Index (IRIQI) that compares the structural information of defective and sound areas. In addition, GSNR and IRIQI are validated by using the area under ROC curve (AUC). AUC quantitatively assesses defect visibility by comparing the outcomes of processing techniques to human judgements. The remarkable benefit of this global approach is that it allows one to determine the frame at which processing techniques reveals the majority of the defects by evaluating the times at which AUC curves reach their maxima. The test pieces were a Carbon-Fiber Reinforced Plastic (CFRP) sample containing delaminations and a honeycomb specimen with delaminations, skin unbonds, excessive adhesive, and crushed core.
机译:红外无损检测(IRNDT)中采用了多种图像处理技术来增强缺陷检测能力。迄今为止,还没有足够的全局度量来客观地评估已处理框架中的缺陷可见性。在这项工作中,提出了一种综合评估处理后的红外(IR)图像中的缺陷可检测性的全局信噪比(GSNR),以及一种名为“红外图像质量指数(IRIQI)”的缺陷可见性度量,该度量比较了缺陷的结构信息。和声音区域。此外,通过使用ROC曲线下的面积(AUC)验证了GSNR和IRIQI。 AUC通过将处理技术的结果与人类判断相比较,来定量评估缺陷的可见性。这种全局方法的显着优势在于,它可以通过评估AUC曲线达到最大值的时间来确定处理技术揭示大多数缺陷的框架。试件是包含分层的碳纤维增强塑料(CFRP)样品和带有分层,表皮未粘结,粘合剂过多和芯体破碎的蜂窝状样品。

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