"Quantification by Signal to Noise Ratio of Active Infrared Thermography Data Processing Techniques"
written by R. Hidalgo-Gato, J. R. Andrés, J. M. López-Higuera, F. J. Madruga,
published by Optics and Photonics Journal, Vol.3 No.4A, 2013
has been cited by the following article(s):
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[38] Automated characterization of subsurface defects by active IR thermographic testing–discussion of step heating duration and def
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[39] The role of the masonry in paintings during a seismic event analyzed by infrared vision
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