A simple method for defect area detection using active thermography

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Abstract

In this paper a simple method for defect area detection in the subsurface layer of materials was presented. The method uses active infrared thermography. A statistical detectivity ratio was introduced for a quantitative characterization of areas containing defects. The described algorithm of defect area detection was tested for a material with a low thermal diffusivity. The results of experimental and simulation investigations are presented. It was stated that the statistical detectivity ratio can be used to detect regions of defect presence, even for the non-uniformly heated surfaces. Versita Warsaw and Springer-Verlag Berlin Heidelberg 2009.

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CITATION STYLE

APA

Dudzik, S. (2009). A simple method for defect area detection using active thermography. Opto-Electronics Review, 17(4), 338–344. https://doi.org/10.2478/s11772-009-0016-9

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