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基于空间结构先验的深度磁共振脑图像超分辨率

Deep MR Brain Image Super-Resolution Using Spatio-Structural Priors.

作者信息

Cherukuri Venkateswararao, Guo Tiantong, Schiff Steven J, Monga Vishal

出版信息

IEEE Trans Image Process. 2019 Sep 25. doi: 10.1109/TIP.2019.2942510.

DOI:10.1109/TIP.2019.2942510
PMID:31562091
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7335214/
Abstract

High resolution Magnetic Resonance (MR) images are desired for accurate diagnostics. In practice, image resolution is restricted by factors like hardware and processing constraints. Recently, deep learning methods have been shown to produce compelling state-of-the-art results for image enhancement/super-resolution. Paying particular attention to desired hi-resolution MR image structure, we propose a new regularized network that exploits image priors, namely a low-rank structure and a sharpness prior to enhance deep MR image super-resolution (SR). Our contributions are then incorporating these priors in an analytically tractable fashion as well as towards a novel prior guided network architecture that accomplishes the super-resolution task. This is particularly challenging for the low rank prior since the rank is not a differentiable function of the image matrix (and hence the network parameters), an issue we address by pursuing differentiable approximations of the rank. Sharpness is emphasized by the variance of the Laplacian which we show can be implemented by a fixed feedback layer at the output of the network. As a key extension, we modify the fixed feedback (Laplacian) layer by learning a new set of training data driven filters that are optimized for enhanced sharpness. Experiments performed on publicly available MR brain image databases and comparisons against existing state-of-the-art methods show that the proposed prior guided network offers significant practical gains in terms of improved SNR/image quality measures. Because our priors are on output images, the proposed method is versatile and can be combined with a wide variety of existing network architectures to further enhance their performance.

摘要

为了进行准确的诊断,需要高分辨率的磁共振(MR)图像。在实际应用中,图像分辨率受到硬件和处理限制等因素的制约。最近,深度学习方法已被证明在图像增强/超分辨率方面能产生令人瞩目的先进成果。特别关注所需的高分辨率MR图像结构,我们提出了一种新的正则化网络,该网络利用图像先验知识,即低秩结构和锐度先验来增强深度MR图像超分辨率(SR)。我们的贡献在于以一种易于分析处理的方式纳入这些先验知识,并朝着一种完成超分辨率任务的新型先验引导网络架构发展。对于低秩先验来说,这尤其具有挑战性,因为秩不是图像矩阵(以及网络参数)的可微函数,我们通过寻求秩的可微近似来解决这个问题。我们通过拉普拉斯算子的方差来强调锐度,并且表明可以通过网络输出端的固定反馈层来实现。作为一个关键扩展,我们通过学习一组针对增强锐度进行优化的新的训练数据驱动滤波器来修改固定反馈(拉普拉斯)层。在公开可用的MR脑图像数据库上进行的实验以及与现有先进方法的比较表明,所提出的先验引导网络在提高信噪比/图像质量指标方面提供了显著的实际优势。由于我们的先验是针对输出图像的,所提出的方法具有通用性,可以与各种现有的网络架构相结合以进一步提高其性能。