基于热成像视觉数据的纤维增强聚合物基复合材料缺陷自动检测

Gonçalves Maria S., M. Machado, Telmo G. Santos, Nuno Mendes
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引用次数: 0

摘要

利用无损检测(NDT)来检测材料外部肉眼不可见的内部缺陷,越来越多地受到工业生产的要求。本研究提出了一种新的方法,用于使用计算机视觉方法从热像仪获取和处理图像,以测试由玻璃、碳和凯夫拉纤维增强的聚合物基体制成的复合材料。图像是在冷却样品时获得的,按照建议的程序。处理方法分为三个步骤,图像预处理、图像处理和数据后处理。在图像预处理中,使用滤波器来提高图像质量,并提出了分割和识别感兴趣区域的方法。在图像处理中,提出了一种斑点分析方法来识别、分离和表征缺陷。提出了一种用于后处理步骤的数据分析方法,以表征在前一步中识别的缺陷。在尺寸,几何形状和位置方面具有已知缺陷的样品用于测试开发的系统。该系统显示出高性能,达到98%的准确率,并且适用于厚度大于0.5 mm,面积大于600mm2的缺陷检测。实验结果表明,该算法没有检测到任何误报,并且分析样本中使用的强化类型对结果没有影响。另一方面,分层的深度对缺陷区域的像素强度对比度及其最大对比度时刻有影响。缺陷检测深度越小,其强度值越高,最大对比度瞬间越短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic defect detection in fiber-reinforced polymer matrix composites using thermographic vision data
The detection of internal defects, not visible to the naked eye from the outside of materials, using non-destructive testing (NDT) are increasingly requested by industrial processes. This study proposes a novel methodology for acquisition and processing of images from a thermographic camera using computer vision methods to test composite materials made of a polymer matrix reinforced with glass, carbon, and kevlar fibers. The image is acquired while cooling the sample, following a suggested procedure. The processing methodology is divided into three steps, image pre-processing, image processing, and data post-processing. In image preprocessing, filters are applied to improve image quality, and methods are proposed to segment and identify the region of interest. In image processing, a blob analysis method is suggested for defect identification, isolation and characterization. A data analysis method is proposed for the post-processing step to characterize the defects identified in the previous step. Samples with known defects in terms of size, geometry, and location were used to test the developed system. The system showed high performance, achieving 98% accuracy, and suitability for defect detection larger than 0.5 mm in thickness and 600 mm2 in area. The experimental results showed that the algorithm did not detect any false positives, and that the type of reinforcement used in the analyzed samples had no influence on the results. On the other hand, the depth of the delaminations had an influence on the pixel intensity contrast of the defect region, and its instant of maximum contrast. The lesser the depth of the defects detected, the higher the value of their intensity and the shorter the instant of maximum contrast.
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