Spatial redundancy transformer for self-supervised fluorescence image denoising

被引:0
|
作者
Xinyang Li
Xiaowan Hu
Xingye Chen
Jiaqi Fan
Zhifeng Zhao
Jiamin Wu
Haoqian Wang
Qionghai Dai
机构
[1] Tsinghua University,Department of Automation
[2] Tsinghua University,Tsinghua Shenzhen International Graduate School
[3] Tsinghua University,Institute for Brain and Cognitive Sciences
[4] Beihang University,Research Institute for Frontier Science
[5] Tsinghua University,Department of Electronic Engineering
[6] Tsinghua University,Beijing Key Laboratory of Multi
[7] Tsinghua University,dimension and Multi
[8] The Shenzhen Institute of Future Media Technology,scale Computational Photography (MMCP)
来源
Nature Computational Science | 2023年 / 3卷
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摘要
Fluorescence imaging with high signal-to-noise ratios has become the foundation of accurate visualization and analysis of biological phenomena. However, the inevitable noise poses a formidable challenge to imaging sensitivity. Here we provide the spatial redundancy denoising transformer (SRDTrans) to remove noise from fluorescence images in a self-supervised manner. First, a sampling strategy based on spatial redundancy is proposed to extract adjacent orthogonal training pairs, which eliminates the dependence on high imaging speed. Second, we designed a lightweight spatiotemporal transformer architecture to capture long-range dependencies and high-resolution features at low computational cost. SRDTrans can restore high-frequency information without producing oversmoothed structures and distorted fluorescence traces. Finally, we demonstrate the state-of-the-art denoising performance of SRDTrans on single-molecule localization microscopy and two-photon volumetric calcium imaging. SRDTrans does not contain any assumptions about the imaging process and the sample, thus can be easily extended to various imaging modalities and biological applications.
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页码:1067 / 1080
页数:13
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