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Automatic image-domain Moire artifact reduction method in grating-based x-ray interferometry imaging

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arxiv 1901.10705 v1 pith:CQSYBFKD submitted 2019-01-30 physics.med-ph

Automatic image-domain Moire artifact reduction method in grating-based x-ray interferometry imaging

classification physics.med-ph
keywords moiremethodartifactsdataimagesignalacquiredexperimental
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The aim of this study is to demonstrate the feasibility of removing the image Moire artifacts caused by system inaccuracies in grating-based x-ray interferometry imaging system via convolutional neural network (CNN) technique. Instead of minimizing these inconsistencies between the acquired phase stepping data via certain optimized signal retrieval algorithms, our newly proposed CNN-based method reduces the Moire artifacts in the image-domain via a learned image post-processing procedure. To ease the training data preparations, we propose to synthesize them with numerical natural images and experimentally obtained Moire artifact-only-images. Moreover, a fast signal processing method has also been developed to generate the needed large number of high quality Moire artifact-only images from finite number of acquired experimental phase stepping data. Experimental results show that the CNN method is able to remove Moire artifacts effectively, while maintaining the signal accuracy and image resolution.

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