Gradient-based image generation for thermographic material inspection

Abstract
Infrared thermography is a non-contact, cost-effective, and non-destructive technique for defect inspection.
Analyzing the surface temperature behavior of an object excited by a suitably designed heat source provides
information on the internal structure of the object. The thermal diffusion coefficient of the material is the
main physical parameter determining the surface temperature profile. Defects are typically characterized by a
different thermal diffusion coefficient than the base material, leading to changes in the heat transfer model.
If defect identification from thermography analysis is possible and computationally efficient, interpreting
the results often requires trained users. In this work, we propose an algorithm for active thermography data
analysis that generates images enabling the detection of the position and size of internal defects. Experimental
results validate the approach, showing its ability to detect blind flat-top holes of 3 mm diameter and depths
of 0.5 mm and 0.8 mm in a 1 mm thick DP600 steel plate. In addition, tests of the proposed technique show
promising results in highlighting embedded defects in a 3D-printed polylactic acid object, proving the algorithm
efficacy for the inspection of materials with different heat diffusion coefficients. These findings highlight the
robustness and practicality of the proposed method for industrial applications.
Type
Publication
Applied Thermal Engineering