Litcius/Paper detail

Defect shape detection and defect reconstruction in active thermography by means of two-dimensional convolutional neural network as well as spatiotemporal convolutional LSTM network

David Müller, U. Netzelmann, Bernd Valeske

2020Quantitative InfraRed Thermography Journal31 citationsDOI

Abstract

A neural network (NN) for semantic segmentation (U-Net) was used for the detection of crack-type defects from thermography sequences. For this task, data sequences of forged steel parts were acquired through induction thermography and the corresponding phase images calculated. The results for defect detection were quantitatively evaluated using Intersection over Union (IoU) metric. Further, a combination of 2D convolutional layer as well as LSTM (Long-Short-Term-Memory) is shown, which includes three-dimensional aspects in the form of time dependent and spatial changes and allows a defect shape reconstruction of back wall drillings. Therefore, pulsed thermography sequences were simulated with COMSOL Multiphysics. Finally, the reconstruction results were compared with the ground-truth defect profile using Mean Squared Error (MSE). The approaches provide improvements over conventional methods in non-destructive testing using infrared thermography.

Topics & Concepts

ThermographyConvolutional neural networkArtificial intelligencePattern recognition (psychology)Computer scienceSegmentationMultiphysicsGround truthArtificial neural networkInfraredIntersection (aeronautics)Materials scienceFinite element methodOpticsPhysicsEngineeringStructural engineeringAerospace engineeringThermography and Photoacoustic TechniquesAdditive Manufacturing Materials and ProcessesWelding Techniques and Residual Stresses