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Automatic detection of subsurface defects in composite materials using thermography and unsupervised machine learning

机译:使用热成像和无监督机器学习自动检测复合材料中的亚表面缺陷

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This paper presents a complete framework aimed to nondestructive inspection of composite materials. Starting from the acquisition, performed with lock-in thermography, the method flows through a set of consecutive blocks of data processing: input enhancement, feature extraction, classification and defect detection. Experimental results prove the capability of the presented methodology to detect the presence of defects underneath the surface of a calibrated specimen made of Glass Fiber Reinforced Polymer (GFRP). Results are also compared with those obtained by other techniques, based on different features and unsupervised learning methods. The comparison further proves that the proposed methodology is able to reduce the number of false positives, while ensuring the exact detection of subsurface defects.
机译:本文提出了一个旨在对复合材料进行无损检测的完整框架。从以锁定热成像技术执行的采集开始,该方法将流经一系列连续的数据处理块:输入增强,特征提取,分类和缺陷检测。实验结果证明了所提出的方法能够检测玻璃纤维增​​强聚合物(GFRP)制成的校准样品表面下缺陷的存在。根据不同的功能和无监督的学习方法,还将结果与通过其他技术获得的结果进行比较。比较结果进一步证明,所提出的方法能够减少假阳性的数量,同时确保准确检测出地下缺陷。

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