Litcius/Paper detail

A machine learning model for textured X-ray scattering and diffraction image denoising

Zhongzheng Zhou, Chun Li, Xiaoxue Bi, Chenglong Zhang, Yingke Huang, Jian Zhuang, Wenqiang Hua, Zheng Dong, Lina Zhao, Yi Zhang, Yuhui Dong

2023npj Computational Materials24 citationsDOIOpen Access PDF

Abstract

Abstract With the advancements in instrumentations of next-generation synchrotron light sources, methodologies for small-angle X-ray scattering (SAXS)/wide-angle X-ray diffraction (WAXD) experiments have dramatically evolved. Such experiments have developed into dynamic and multiscale in situ characterizations, leaving prolonged exposure time as well as radiation-induced damage a serious concern. However, reduction on exposure time or dose may result in noisier images with a lower signal-to-noise ratio, requiring powerful denoising mechanisms for physical information retrieval. Here, we tackle the problem from an algorithmic perspective by proposing a small yet effective machine-learning model for experimental SAXS/WAXD image denoising, allowing more redundancy for exposure time or dose reduction. Compared with classic models developed for natural image scenarios, our model provides a bespoke denoising solution, demonstrating superior performance on highly textured SAXS/WAXD images. The model is versatile and can be applied to denoising in other synchrotron imaging experiments when data volume and image complexity is concerned.

Topics & Concepts

Noise reductionSmall-angle X-ray scatteringScatteringDiffractionMaterials scienceComputer scienceReduction (mathematics)Synchrotron radiationSynchrotronArtificial intelligenceOpticsPhysicsMathematicsGeometryMedical Imaging Techniques and ApplicationsAdvanced X-ray Imaging TechniquesAdvanced MRI Techniques and Applications