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A machine learning model for textured X-ray scattering and diffraction image denoising
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作者 Zhongzheng Zhou Chun Li +8 位作者 xiaoxue bi Chenglong Zhang Yingke Huang Jian Zhuang Wenqiang Hua Zheng Dong Lina Zhao Yi Zhang Yuhui Dong 《npj Computational Materials》 SCIE EI CSCD 2023年第1期1756-1769,共14页
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 ... 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. 展开更多
关键词 IMAGE SCATTERING VERSATILE
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