Terahertz Super-Resolution Nondestructive Detection Algorithm Based on Edge Feature Convolution Network.

IEEE Access(2023)

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摘要
Much research has been conducted to improve the defect-detection rate and detection accuracy of the imaging technology used in terahertz nondestructive testing. Due to the power limit of light sources and noise interference in terahertz equipment, images have low resolution and fuzzy defect edges. Hence, improving the resolution is crucial for detecting defects. We designed an edge detection network structure based on a traditional deep neural network. Besides, we devised a node-fusing strategy to train the network. It demonstrates significant improvement of the resolution of the terahertz defect contour. A quartz fiber composites with embedded defects was tested with our network. The results showed that the proposed super-resolution reconstruction algorithm improves resolution, particularly on the edges of defect contours.
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关键词
Terahertz wave imaging,Feature extraction,Convolution,Image edge detection,Training,Circuit breakers,Superresolution,Composite materials,deep neural network,nondestructive testing,super-resolution algorithm,terahertz imaging
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