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Convolutional analysis operator learning: Application to sparse-view CT : (Invited Paper)

机译:卷积分析运营商学习:应用于Sparse-View CT :(邀请纸)

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Convolutional analysis operator learning (CAOL) methods train an autoencoding convolutional neural network (CNN) in an unsupervised learning manner, to more accurately solve inverse problems. Block Proximal Gradient method using a Majorizer (BPG-M) achieved fast and convergent CAOL, by using sharp majorizers and the momentum terms. This paper proposes a model-based image reconstruction (MBIR) method using autoencoding CNNs trained via CAOL, for sparse-view computational tomography (CT). We apply BPG-M to rapidly and stably solve the corresponding block multi-nonconvex optimization problem. Numerical experiments show that, for sparse-view CT, 1) the proposed MBIR method outperforms the standard MBIR method using edge-preserving regularization; 2) larger parameter dimensions of autoencoding CNNs improve reconstruction accuracy of the proposed MBIR method; and 3) when using BPG-M, sharper majorization is more critical for accelerating its convergence than giving more weights on extrapolation.
机译:卷积分析运营商学习(CAOL)方法以无监督的学习方式训练AutoEncoding卷积神经网络(CNN),以更准确地解决逆问题。通过使用尖锐的大致饮料和动量术语,块使用大型器(BPG-M)的近端梯度法实现快速和会聚CAOL。本文提出了一种基于模型的图像重建(MBIR)方法,使用通过CAOL培训的自动编码CNNS,用于稀疏 - 视图计算断层摄影(CT)。我们将BPG-M应用于快速且稳定地解决相应的块多个非凸化优化问题。数值实验表明,对于稀疏视图CT,1)所提出的MBIR方法优于使用边缘保留正则化的标准MBIR方法; 2)自动化的较大参数尺寸CNNS提高了建议的MBIR方法的重建精度; 3)使用BPG-M时,对于加速其收敛性而言,更为重要的是,而不是在外推上提供更多重量。

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