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A joint deep learning model to recover information and reduce artifacts in missing-wedge sinograms for electron tomography and beyond

机译:恢复信息的联合深度学习模型,减少缺失楔形的杂皮图中的伪影术中的电子断层扫描和超越

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We present a joint model based on deep learning that is designed to inpaint the missing-wedge sinogram of electron tomography and reduce the residual artifacts in the reconstructed tomograms. Traditional methods, such as weighted back projection (WBP) and simultaneous algebraic reconstruction technique (SART), lack the ability to recover the unacquired project information as a result of the limited tilt range; consequently, the tomograms reconstructed using these methods are distorted and contaminated with the elongation, streaking, and ghost tail artifacts. To tackle this problem, we first design a sinogram filling model based on the use of Residual-in-Residual Dense Blocks in a Generative Adversarial Network (GAN). Then, we use a U-net structured Generative Adversarial Network to reduce the residual artifacts. We build a two-step model to perform information recovery and artifacts removal in their respective suitable domain. Compared with the traditional methods, our method offers superior Peak Signal to Noise Ratio (PSNR) and the Structural Similarity Index (SSIM) to WBP and SART; even with a missing wedge of 45°, our method offers reconstructed images that closely resemble the ground truth with nearly no artifacts. In addition, our model has the advantage of not needing inputs from human operators or setting hyperparameters such as iteration steps and relaxation coefficient used in TV-based methods, which highly relies on human experience and parameter fine turning.
机译:我们介绍了一个基于深度学习的联合模型,旨在根据电子断层扫描的缺失循环杂志进行缺失,并减少重建断层照片中的残余伪影。传统方法,如加权背部投影(WBP)和同时代数重建技术(SART),缺乏由于倾斜范围有限的结果恢复无法应急的项目信息;因此,使用这些方法重建的断层图像扭曲和污染伸长,条纹和鬼尾部伪像。为了解决这个问题,我们首先基于在生成的对抗网络(GaN)中使用残留残留的致密块的使用储存填充模型。然后,我们使用U-Net结构的生成对冲网络来减少残留的伪影。我们构建了一个两步模型,以在其各自的合适域中执行信息恢复和伪影。与传统方法相比,我们的方法为噪声比(PSNR)和结构相似性指数(SSIM)提供了卓越的峰值信号;即使有45°的缺失楔形,我们的方法也提供了重建的图像,其与几乎没有伪像的基础真理非常相似。此外,我们的模型具有不需要从人工操作者或基于电视的方法中使用的迭代步骤和放松系数的迭代步骤和放松系数的优势的优势,这非常依赖于人类体验和参数致电。

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