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A novel super-resolution CT image reconstruction via semi-supervised generative adversarial network

机译:半监督生成对冲网络新型超分辨率CT图像重建

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摘要

Reconstruction of super-resolution CT images using deep learning requires a large number of high-resolution images. However, high-resolution images are often limited to access due to CT performance and operation factors. In this paper, a new semi-supervised generative adversarial network is presented to accurately recover high-resolution CT images from low-resolution counterparts. We use a deep unsupervised network of 16 residual blocks to design the generator and build a discriminator based on a supervised network. We also apply a parallel 1 x 1 convolution operation to reduce the dimensionality of each hidden layer's output. Four types of loss functions are presented to build a new one for enforcing the mappings between the generator and discriminator. The bulk specification layer in the commonly used residual network is removed to construct a new type of residual network. In terms of experiments, we conduct an objective and subjective comprehensive evaluation with several state-of-the-art methods. The comparison results show that our proposed network has better advantages in super-resolution image reconstruction.
机译:使用深度学习重建超分辨率CT图像需要大量的高分辨率图像。然而,高分辨率图像通常限于由于CT性能和操作因素而访问。本文提出了一种新的半监督生成的对抗网络,以精确地从低分辨率对应物中恢复高分辨率CT图像。我们使用16个残留块的深度无监督网络来设计发电机并基于监督网络构建鉴别器。我们还应用了一个平行的1 x 1卷积操作,以降低每个隐藏层输出的维度。提出了四种类型的丢失功能,以构建一个新的丢失功能,用于在发电机和鉴别器之间执行映射。常用的残差网络中的批量规范层被移除以构造一种新型的剩余网络。在实验方面,我们采用几种最先进的方法进行客观和主观的综合评价。比较结果表明,我们所提出的网络在超级分辨率图像重建方面具有更好的优势。

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