Photothermal-SR-Net: A Customized Deep Unfolding Neural Network for Photothermal Super Resolution Imaging
Samim Ahmadi, Linh K\"astner, Jan Christian Hauffen, Peter Jung,, Mathias Ziegler

TL;DR
This paper introduces Photothermal-SR-Net, a deep unfolding neural network that leverages physics-based deconvolution and sparsity to achieve super resolution in photothermal imaging, improving defect detection in nondestructive testing.
Contribution
The paper proposes a novel deep unfolding neural network tailored for photothermal super resolution imaging, integrating physics-based deconvolution and block-sparsity thresholding.
Findings
Significantly improved convergence rate in super resolution imaging.
Reduced computational time with pixel binning without loss of quality.
Enhanced defect detection accuracy in nondestructive testing.
Abstract
This paper presents deep unfolding neural networks to handle inverse problems in photothermal radiometry enabling super resolution (SR) imaging. Photothermal imaging is a well-known technique in active thermography for nondestructive inspection of defects in materials such as metals or composites. A grand challenge of active thermography is to overcome the spatial resolution limitation imposed by heat diffusion in order to accurately resolve each defect. The photothermal SR approach enables to extract high-frequency spatial components based on the deconvolution with the thermal point spread function. However, stable deconvolution can only be achieved by using the sparse structure of defect patterns, which often requires tedious, hand-crafted tuning of hyperparameters and results in computationally intensive algorithms. On this account, Photothermal-SR-Net is proposed in this paper,…
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Taxonomy
TopicsThermography and Photoacoustic Techniques · Photoacoustic and Ultrasonic Imaging · Machine Learning in Materials Science
MethodsDiffusion
