基于高分辨率图像斑块自相似度监督自适应的图像超分辨率。

Guorong Wu, Xiaofeng Zhu, Qian Wang, Dinggang Shen
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引用次数: 4

摘要

图像超分辨率是医学成像领域的研究热点。然而,与计算机视觉领域研究的自然图像不同,低分辨率(LR)医学成像数据往往是一堆高分辨率(HR)的大切片厚度的二维切片。因此,医学成像数据的超分辨率目标是重建任意两个连续切片之间的缺失切片。由于某些模态(如t1加权MR图像)通常是由高分辨率(HR)图像获得的,因此利用HR图像中的先验自相似信息来指导LR图像(如t2加权MR图像)的超分辨率是直观的。传统的方法是在HR图像中找到patch - wise自相似的轮廓,然后利用它来重建LR图像相同位置的缺失信息。然而,由于使用不同的成像方案,局部形态学模式可能在LR和HR图像上有显著差异。因此,这种直接的(无监督的)自相似轮廓自适应的HR图像往往不能有效地揭示LR图像中的实际信息。为此,我们提出利用LR图像中的现有图像信息来监督自相似轮廓的估计,要求自相似轮廓不仅在HR图像中的patch表示上是最优的,而且对LR图像中的现有图像信息产生更小的重构误差。此外,为了使重建图像中的解剖结构在空间上保持一致,我们通过求解群稀疏斑块表示问题,同时估计连续切片上的一堆斑块的自相似轮廓。我们已经在模拟的大脑MR图像和多发性硬化症病变的真实患者图像上评估了我们提出的超分辨率方法,获得了更多解剖细节和清晰度的有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Image Super-Resolution by Supervised Adaption of Patchwise Self-similarity from High-Resolution Image.

Image super-resolution is of great interest in medical imaging field. However, different from natural images studied in computer vision field, the low-resolution (LR) medical imaging data is often a stack of high-resolution (HR) 2D slices with large slice thickness. Consequently, the goal of super-resolution for medical imaging data is to reconstruct the missing slice(s) between any two consecutive slices. Since some modalities (e.g., T1-weighted MR image) are often acquired with high-resolution (HR) image, it is intuitive to harness the prior self-similarity information in the HR image for guiding the super-resolution of LR image (e.g., T2-weighted MR image). The conventional way is to find the profile of patchwise self-similarity in the HR image and then use it to reconstruct the missing information at the same location of LR image. However, the local morphological patterns could vary significantly across the LR and HR images, due to the use of different imaging protocols. Therefore, such direct (un-supervised) adaption of self-similarity profile from HR image is often not effective in revealing the actual information in the LR image. To this end, we propose to employ the existing image information in the LR image to supervise the estimation of self-similarity profile by requiring it not only being optimal in representing patches in the HR image, but also producing less reconstruction errors for the existing image information in the LR image. Moreover, to make the anatomical structures spatially consistent in the reconstructed image, we simultaneously estimate the self-similarity profiles for a stack of patches across consecutive slices by solving a group sparse patch representation problem. We have evaluated our proposed super-resolution method on both simulated brain MR images and real patient images with multiple sclerosis lesion, achieving promising results with more anatomical details and sharpness.

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Isointense Infant Brain Segmentation by Stacked Kernel Canonical Correlation Analysis. Prediction of Infant MRI Appearance and Anatomical Structure Evolution using Sparse Patch-based Metamorphosis Learning Framework. Image Super-Resolution by Supervised Adaption of Patchwise Self-similarity from High-Resolution Image. Block-Based Statistics for Robust Non-parametric Morphometry. Multi-Atlas and Multi-Modal Hippocampus Segmentation for Infant MR Brain Images by Propagating Anatomical Labels on Hypergraph.
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