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Learning from a Handful Volumes: MRI Resolution Enhancement with Volumetric Super-Resolution Forests

机译:从少量卷中学习:体积超分辨率森林可增强MRI分辨率

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Magnetic resonance imaging (MRI) enables 3-D imaging of anatomical structures. However, the acquisition of MR volumes with high spatial resolution leads to long scan times. To this end, we propose volumetric super-resolution forests (VSRF) to enhance MRI resolution retrospectively. Our method learns a locally linear mapping between low-resolution and high-resolution volumetric image patches by employing random forest regression. We customize features suitable for volumetric MRI to train the random forest and propose a median tree ensemble for robust regression. VSRF out-performs state-of-the-art example-based super-resolution in terms of image quality and efficiency for model training and inference on different MRI datasets. It is also superior to unsupervised methods with just a handful or even a single volume to assemble training data.
机译:磁共振成像(MRI)可以对解剖结构进行3D成像。但是,具有高空间分辨率的MR体积的采集导致较长的扫描时间。为此,我们提出了体积超分辨率森林(VSRF)以回顾性地增强MRI分辨率。我们的方法通过采用随机森林回归来学习低分辨率和高分辨率体积图像块之间的局部线性映射。我们自定义适合于体积MRI的特征以训练随机森林,并提出中位数树集合以实现稳健的回归。在针对不同MRI数据集进行模型训练和推理的图像质量和效率方面,VSRF优于基于示例的超分辨率。它也比无人监督的方法要好,只需少量甚至单个体积即可汇编训练数据。

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