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  4. Pulsed Thermography Dataset for Training Deep Learning Models
 
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2023
Journal Article
Title

Pulsed Thermography Dataset for Training Deep Learning Models

Abstract
Pulsed thermography is an indispensable tool in the field of non-destructive evaluation. However, the data generated by this technique can be challenging to analyze and require expertise to interpret. With the rapid progress in deep learning, image segmentation has become a well-established area of research. This hasmotivated efforts to apply deep learningmethods to non-destructive evaluation data processing, including pulsed thermography. Despite this trend, there has been a lack of public pulsed thermography datasets available for the evaluation of various spatial-temporal deep learning models for segmentation tasks. This paper aims to address this gap by presenting the PVC-Infrared dataset for deep learning. In addition, we evaluated the performance of popular deep-learning-based instance segmentation models on this dataset. Furthermore, we examined the effect of the number of frames and data transformations on the performance of these models. The results of this study suggest that appropriate preprocessing techniques can significantly reduce the size of the data while maintaining the performance of deep learning models, thereby speeding up the data processing process. This highlights the potential for using deep learning methods to make non-destructive evaluation data analysis more efficient and accessible to a wider range of practitioners.
Author(s)
Wei, Ziang
University Laval, Faculty of Science and Engineering, Department of Electrical and Computer Engineering
Osman, Ahmad  
Fraunhofer-Institut für Zerstörungsfreie Prüfverfahren IZFP  
Valeske, Bernd  
Fraunhofer-Institut für Zerstörungsfreie Prüfverfahren IZFP  
Maldague, Xavier
University Laval, Faculty of Science and Engineering, Department of Electrical and Computer Engineering
Journal
Applied Sciences  
Open Access
DOI
10.3390/app13052901
Additional full text version
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Language
English
Fraunhofer-Institut für Zerstörungsfreie Prüfverfahren IZFP  
Keyword(s)
  • pulsed thermographic dataset

  • deep learning

  • defect detection

  • non-destructive evaluation

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