@ARTICLE{Dinardo_Giuseppe_Automatic_2020, author={Dinardo, Giuseppe and Fabbiano, Laura and Tamborrino, Rosanna and Vacca, Gaetano}, volume={vol. 27}, number={No 2}, journal={Metrology and Measurement Systems}, pages={219-242}, howpublished={online}, year={2020}, publisher={Polish Academy of Sciences Committee on Metrology and Scientific Instrumentation}, abstract={In the framework of non-destructive evaluation (NDE), an accurate and precise characterization of defects is fundamental. This paper proposes a novel method for characterization of partial detachment of thermal barrier coatings from metallic surfaces, using the long pulsed thermography (LPT). There exist many applications, in which the LPT technique provides clear and intelligible thermograms. The introduced method comprises a series of post-processing operations of the thermal images. The purpose is to improve the linear fit of the cooling stage of the surface under investigation in the logarithmic scale. To this end, additional fit parameters are introduced. Such parameters, defined as damage classifiers, are represented as image maps, allowing for a straightforward localization of the defects. The defect size information provided by each classifier is, then, obtained by means of an automatic segmentation of the images. The main advantages of the proposed technique are the automaticity (due to the image segmentation procedures) and relatively limited uncertainties in the estimation of the defect size.}, type={Article}, title={Automatic defect detection and characterization by thermographic images based on damage classifiers evaluation}, URL={http://journals.pan.pl/Content/116009/PDF/art02.pdf}, doi={10.24425/mms.2020.132771}, keywords={thermography, non-destructive testing, thermal barrier coatings, image segmentation, uncertainty analysis}, }