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Machine Learning in Thermography Non-Destructive Testing: A Systematic Review

Shaoyang Peng, Sri Addepalli, Maryam Farsi

2025Applied Sciences9 citationsDOIOpen Access PDF

Abstract

This paper reviews recent advances in machine learning (ML) algorithms to improve the postprocessing and interpretation of thermographic data in non-destructive testing (NDT). While traditional NDT methods (e.g., visual inspection, ultrasonic testing) each have their own advantages and limitations, thermographic techniques (e.g., pulsed thermography, laser thermography) have become valuable complementary tools, particularly in inspecting advanced materials such as carbon fiber-reinforced polymers (CFRPs) and superalloys. These techniques generate large volumes of thermal data, which can be challenging to analyze efficiently and accurately. This review focuses on how ML can accelerate defect detection and automated classification in thermographic NDT. We summarize currently popular algorithms and analyze the limitations of existing workflows. Furthermore, this structured analysis provides an in-depth understanding of how artificial intelligence can assist in processing NDT data, with the potential to enable more accurate defect detection and characterization in industrial applications.

Topics & Concepts

ThermographyForensic engineeringEngineeringOpticsPhysicsInfraredThermography and Photoacoustic TechniquesCalibration and Measurement TechniquesInfrared Thermography in Medicine
Machine Learning in Thermography Non-Destructive Testing: A Systematic Review | Litcius