Curves-Based Similarity Method (CBSM) for Defect Depth Quantization

IEEE Transactions on Instrumentation and Measurement(2023)

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Abstract
In the pulse eddy current thermal imaging experiments, the trends of temperature response curves of buried defects at different depths are the same, but there are differences in cooling rates. The accuracy of depth quantification of buried defects can be improved by making full use of the rich information contained in the temperature response curves. To this end, a feature extraction, defect segmentation, and depth quantification algorithm named the curves-based similarity method (CBSM) is proposed in this article. By making comprehensive use of the global and local features of thermal image sequences, the average similarity of the temperature response curve is used as the feature extraction method and quantification parameter. The effectiveness of the method is verified by simulation and experiment. The results show that the method can better enhance the defect information and suppress the noise compared with principal component analysis (PCA) and pulsed phase thermography (PPT). Additionally, the average error of the quantization results of the algorithm is reduced by 1.33% compared with the characteristic time quantization method.
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Key words
Defect detection,depth quantification,feature extraction
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