Publication | Closed Access
Generative Principal Component Thermography for Enhanced Defect Detection and Analysis
115
Citations
30
References
2020
Year
EngineeringMachine LearningEnhanced Defect DetectionAutoencodersCarbon FiberImage AnalysisData SciencePattern RecognitionThermal AnalysisGenerative ModelSynthetic Image GenerationData AugmentationMedical ImagingNondestructive TestingDeep LearningDefect DetectionComputer VisionDefect Detection PerformanceGenerative Adversarial NetworkThermography
Machine learning methods play an important role in the nondestructive testing field for quality assessment of polymer composites. As a popular deep learning branch, a generative adversarial network is introduced to the thermography field as an image augmentation approach to improve its defect detection performance. Specifically, a generative principal component thermography (GPCT) method for defect detection in polymer composites is proposed. By employing the data augmentation strategy, more informative images are generated to enlarge the diversity of the original set of images. The defect detection results can be visualized using a number of interpretable features. Consequently, the defect detection performance of thermographic data analysis can be enhanced to some extent. The experimental results on a carbon fiber reinforced polymer specimen demonstrate the feasibility and advantages of the GPCT method.
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