12 May 2015 Principal component analysis of thermographic data
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Abstract
Principal Component Analysis (PCA) has been shown effective for reducing thermographic NDE data. While a reliable technique for enhancing the visibility of defects in thermal data, PCA can be computationally intense and time consuming when applied to the large data sets typical in thermography. Additionally, PCA can experience problems when very large defects are present (defects that dominate the field-of-view), since the calculation of the eigenvectors is now governed by the presence of the defect, not the "good" material. To increase the processing speed and to minimize the negative effects of large defects, an alternative method of PCA is being pursued where a fixed set of eigenvectors, generated from an analytic model of the thermal response of the material under examination, is used to process the thermal data from composite materials. This method has been applied for characterization of flaws.
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William P. Winfree, William P. Winfree, K. Elliott Cramer, K. Elliott Cramer, Joseph N. Zalameda, Joseph N. Zalameda, Patricia A. Howell, Patricia A. Howell, Eric R. Burke, Eric R. Burke, } "Principal component analysis of thermographic data", Proc. SPIE 9485, Thermosense: Thermal Infrared Applications XXXVII, 94850S (12 May 2015); doi: 10.1117/12.2176285; https://doi.org/10.1117/12.2176285
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