扩散ir:用于三维显微图像各向同性重建的扩散模型

Mingjie Pan, Yulu Gan, Fangxu Zhou, Jiaming Liu, Aimin Wang, Shanghang Zhang, Dawei Li
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引用次数: 0

摘要

三维显微镜通常受到各向异性空间分辨率的限制,导致轴向分辨率低于横向分辨率。目前最先进的(SoTA)各向同性重建方法利用深度神经网络可以在固定成像设置中实现令人印象深刻的超分辨率性能。然而,它们在实际使用中的通用性受到在面对看不见的各向异性因素时由伪影和模糊引起的性能下降的限制。为了解决这些问题,我们提出了DiffuseIR,一种基于扩散模型的无监督各向同性重建方法。首先,我们预训练扩散模型,从横向显微图像中学习生物组织的结构分布,从而生成自然的高分辨率图像。然后利用低轴向分辨率的显微图像来调节扩散模型的生成过程,生成高轴向分辨率的重建结果。由于扩散模型学习了生物组织的普遍结构分布,与轴向分辨率无关,因此DiffuseIR可以将未见过的低轴向分辨率的真实图像重建为高轴向分辨率的图像,而无需重新训练。本文提出的扩散红外方法在EM数据实验中达到了SoTA的性能,甚至可以与监督方法相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DiffuseIR: Diffusion Models For Isotropic Reconstruction of 3D Microscopic Images
Three-dimensional microscopy is often limited by anisotropic spatial resolution, resulting in lower axial resolution than lateral resolution. Current State-of-The-Art (SoTA) isotropic reconstruction methods utilizing deep neural networks can achieve impressive super-resolution performance in fixed imaging settings. However, their generality in practical use is limited by degraded performance caused by artifacts and blurring when facing unseen anisotropic factors. To address these issues, we propose DiffuseIR, an unsupervised method for isotropic reconstruction based on diffusion models. First, we pre-train a diffusion model to learn the structural distribution of biological tissue from lateral microscopic images, resulting in generating naturally high-resolution images. Then we use low-axial-resolution microscopy images to condition the generation process of the diffusion model and generate high-axial-resolution reconstruction results. Since the diffusion model learns the universal structural distribution of biological tissues, which is independent of the axial resolution, DiffuseIR can reconstruct authentic images with unseen low-axial resolutions into a high-axial resolution without requiring re-training. The proposed DiffuseIR achieves SoTA performance in experiments on EM data and can even compete with supervised methods.
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