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4D X-Ray CT Reconstruction using Multi-Slice Fusion

机译:使用多切片融合的4D X射线CT重建

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There is an increasing need to reconstruct objects in four or more dimensions corresponding to space, time and other independent parameters. The best 4D reconstruction algorithms use regularized iterative reconstruction approaches such as model based iterative reconstruction (MBIR), which depends critically on the quality of the prior modeling. Recently, Plug-and-Play methods have been shown to be an effective way to incorporate advanced prior models using state-of-the-art denoising algorithms designed to remove additive white Gaussian noise (AWGN). However, state-of-the-art denoising algorithms such as BM4D and deep convolutional neural networks (CNNs) are primarily available for 2D and sometimes 3D images. In particular, CNNs are difficult and computationally expensive to implement in four or more dimensions, and training may be impossible if there is no associated high-dimensional training data.In this paper, we present Multi-Slice Fusion, a novel algorithm for 4D and higher-dimensional reconstruction, based on the fusion of multiple low-dimensional denoisers. Our approach uses multi-agent consensus equilibrium (MACE), an extension of Plug-and-Play, as a framework for integrating the multiple lower-dimensional prior models. We apply our method to the problem of 4D cone-beam X-ray CT reconstruction for Non Destructive Evaluation (NDE) of moving parts. This is done by solving the MACE equations using lower-dimensional CNN denoisers implemented in parallel on a heterogeneous cluster. Results on experimental CT data demonstrate that Multi-Slice Fusion can substantially improve the quality of reconstructions relative to traditional 4D priors, while also being practical to implement and train.
机译:越来越需要在与空间,时间和其他独立参数对应的四个或更多维中重建对象。最好的4D重建算法使用正则化迭代重建方法,例如基于模型的迭代重建(MBIR),这尺寸依赖于先前建模的质量。最近,已经显示了即插即用的方法是使用最先进的去噪算法结合先进的先前模型,该方法是使用最先进的去噪算法来消除添加性白色高斯噪声(AWGN)。然而,最先进的去噪算法,例如BM4D和深卷积神经网络(CNNS)主要可用于2D,有时3D图像。特别地,在四个或更多维中实现CNNS难以且计算地昂贵,并且如果没有相关的高维训练数据,则可能是不可能的。在本文中,我们呈现多切片融合,4D新颖算法基于多个低维置置的融合的高维重建。我们的方法使用多代理共识平衡(MACE),即插即用的扩展,作为集成多个下维先前模型的框架。我们将方法应用于运动部件的非破坏性评估(NDE)的4D锥形光束X射线CT重建的方法。这是通过使用在异构簇上并行实现的下方实现的低维CNN脱机仪来解决的支柱方程来完成。实验CT数据的结果表明,多切片融合可以显着提高传统4D前锋的重建质量,同时实施和培训。

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