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Sparse-View CT Reconstruction Based on Mojette Transfrom Using Convolutional Neural Network

机译:卷积神经网络基于Mojette变换的稀疏CT重建

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Sparse-view computed tomography (CT) has attracted much attention to reduce the potential radiation risk. However, image reconstruction from insufficient data suffers from distortion. As a discrete form of Radon transform, Mojette transform is exactly invertible even with few samples based on discrete projection and reconstruction lattice. The goal of this paper is to apply Mojette transform to reconstruct images from few views in practice. Due to the fact that its acquisition is incompatible with physical X-ray properties, this paper resorts to deep learning technique to map Radon projection into Mojette domain. Experimental results confirm the effectiveness of the proposed reconstruction scheme based on Mojette transform.
机译:稀疏计算机断层扫描(CT)已引起人们的广泛关注,以减少潜在的辐射风险。然而,从不足的数据重建图像会遭受失真。作为Radon变换的离散形式,即使基于离散投影和重构晶格的样本很少,Mojette变换也可以完全可逆。本文的目的是应用Mojette变换在实践中从很少的角度重建图像。由于它的获取与X射线的物理特性不兼容,因此本文采用深度学习技术将Radon投影映射到Mojette域。实验结果证实了所提出的基于Mojette变换的重建方案的有效性。

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