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首页> 外文期刊>ITB Journal of Information and Communication Technology >Automated Defect Detection and Characterization on Pulse Thermography Images Using Computer Vision Techniques
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Automated Defect Detection and Characterization on Pulse Thermography Images Using Computer Vision Techniques

机译:使用计算机视觉技术对脉冲热成像图像进行自动缺陷检测和表征

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摘要

Defect detection and characterization plays a vital role in predicting the life span of materials. Defect detection using appropriate inspection technologies at various phases has gained huge importance in metal production lines. It can be accomplished through wise application of non-destructive testing and evaluation (NDE). It is important to characterize defects at an early stage in order to be able to overcome them or take corrective measures. Pulse thermography is a modern NDE method that can be used for defect detection in metal objects. Only a limited amount of work has been done on automated detection and characterization of defects due to thermal diffusion. This paper proposes a system for automatic defect detection and characterization in metal objects using pulse thermography images as well as various image processing algorithms and mathematical tools. An experiment was carried out using a sequence of 250 pulse thermography images of an AISI 316 L stainless steel sheet with synthetic defects. The proposed system was able to detect and characterize defects sized 10 mm, 8 mm, 6 mm, 4 mm and 2 mm with an average accuracy of 96%, 95%, 84%, 77%, 54% respectively. The proposed technique helps in the effective and efficient characterization of defects in metal objects.
机译:缺陷检测和表征在预测材料的使用寿命方面起着至关重要的作用。在金属生产线中,在各个阶段使用适当的检查技术进行缺陷检测已变得非常重要。可以通过明智地应用无损检测和评估(NDE)来实现。重要的是要尽早表征缺陷,以便能够克服缺陷或采取纠正措施。脉冲热成像技术是一种现代的NDE方法,可用于检测金属物体中的缺陷。在自动检测和表征由于热扩散引起的缺陷方面,仅进行了有限的工作。本文提出了一种使用脉冲热成像图像以及各种图像处理算法和数学工具对金属物体进行自动缺陷检测和表征的系统。使用具有合成缺陷的AISI 316 L不锈钢薄板的250个脉冲热成像图像序列进行了实验。所提出的系统能够检测和表征尺寸分别为10 mm,8 mm,6 mm,4 mm和2 mm的缺陷,其平均准确度分别为96%,95%,84%,77%和54%。所提出的技术有助于有效,高效地表征金属物体中的缺陷。

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