Shallow U-Net Deep Learning Approach for Phase Retrieval in Propagation-Based Phase-Contrast Imaging (2022)

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Abstract
X-Ray Computed Tomography (CT) has revolutionised modern medical imaging. However, X-Ray CT imaging requires patients to be exposed to radiation, which can increase the risk of cancer. Therefore there exists an aim to reduce radiation doses for CT imaging without sacrificing image accuracy. This research combines phase retrieval with the ShallowU-Net CNN method to achieve the aim. This paper shows that a significant change in existing machine learning neural network algorithms could improve the X-ray phase retrieval in propagationbased phase-contrast imaging. This paper applies deep learning methods, through a variant of the existing U-Net architecture, named ShallowU-Net, to show that it is possible to perform two distance X-ray phase retrieval on composite materials by predicting a portion of the required data. ShallowU-Net is faster in training and in deployment. This method also performs data stretching and pre-processing, to reduce the numerical instability of the U-Net algorithm thereby improving the phase retrieval images.
Citation
Li SZ, French MG, Pavlov KM, Li HT (2022). Shallow U-Net Deep Learning Approach for Phase Retrieval in Propagation-Based Phase-Contrast Imaging. San Diego, California, United States: SPIE Optical Engineering + Applications, “Developments in X-Ray Tomography XIV”. 21/08/2022-25/08/2022. Developments in X-Ray Tomography XIV.This citation is automatically generated and may be unreliable. Use as a guide only.
Keywords
Deep Learning; Phase Retrieval; Shallow U-Net; X-Ray Projection; Phase ContrastANZSRC Fields of Research
32 - Biomedical and clinical sciences::3202 - Clinical sciences::320206 - Diagnostic radiography32 - Biomedical and clinical sciences::3202 - Clinical sciences::320222 - Radiology and organ imaging
46 - Information and computing sciences::4603 - Computer vision and multimedia computation::460308 - Pattern recognition
46 - Information and computing sciences::4603 - Computer vision and multimedia computation::460306 - Image processing
46 - Information and computing sciences::4611 - Machine learning::461104 - Neural networks
46 - Information and computing sciences::4611 - Machine learning::461103 - Deep learning
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