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Sparse-View CT Reconstruction Using Wasserstein GANs

机译:使用Wassersein Gans的稀疏视图CT重建

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摘要

We propose a 2D computed tomography (CT) slice image reconstruction method from a limited number of projection images using Wasserstein generative adversarial networks (wGAN). Our wGAN optimizes the 2D CT image reconstruction by utilizing an adversarial loss to improve the perceived image quality as well as an L_1 content loss to enforce structural similarity to the target image. We evaluate our wGANs using different weight factors between the two loss functions and compare to a convolutional neural network (CNN) optimized on L_1 and the Filtered Backprojection (FBP) method. The evaluation shows that the results generated by the machine learning based approaches are substantially better than those from the FBP method. In contrast to the blurrier looking images generated by the CNNs trained on L_1, the wGANs results appear sharper and seem to contain more structural information. We show that a certain amount of projection data is needed to get a correct representation of the anatomical correspondences.
机译:我们提出了使用Wassersein生成对冲网络(WAN)的有限数量的投影图像中的2D计算机断层扫描(CT)切片图像重建方法。我们的Wgan通过利用对抗的丧失丧失来优化2D CT图像重建,以改善感知的图像质量以及L_1内容丢失,以强制与目标图像的结构相似度。我们使用两种损耗功能之间的不同权重因素评估我们的WGAN,并与在L_1上优化的卷积神经网络(CNN)和过滤的反冲(FBP)方法进行比较。评估表明,由基于机器学习的方法产生的结果基本上比来自FBP方法的方法更好。与由在L_1培训的CNNS生成的模糊的图像相比,WGANS结果看起来更清晰,似乎包含更多结构信息。我们表明需要一定量的投影数据来获得解剖学对应的正确表示。

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