Medical images, especially volumetric images, are of high resolution and often exceed the capacity of standard desktop GPUs. As a result, most deep learning-based medical image analysis tasks require the input images to be downsampled, often substantially, before these can be fed to a neural network. However, downsampling can lead to a loss of image quality, which is undesirable especially in reconstruction tasks, where the fine geometric details need to be preserved. In this paper, we propose that high-resolution images can be reconstructed in a coarse-to-fine fashion, where a deep learning algorithm is only responsible for generating a coarse representation of the image, which consumes moderate GPU memory. For producing the high-resolution outcome, we propose two novel methods: learned voxel rearrangement of the coarse output and hierarchical image synthesis. Compared to the coarse output, the high-resolution counterpart allows for smooth surface triangulation, which can be 3D-printed in the highest possible quality. Experiments of this paper are carried out on the dataset of AutoImplant 2021 (https://autoimplant2021.grand-challenge.org/), a MICCAI challenge on cranial implant design. The dataset contains high-resolution skulls that can be viewed as 2D manifolds embedded in a 3D space. Codes associated with this study can be accessed at https://github.com/Jianningli/voxel_rearrangement.
翻译:医学图像,特别是体积图像,是高分辨率的,往往超过标准桌面GPU的能力。因此,大多数基于学习的医学图像分析任务都需要对输入图像进行下层取样,通常在大量程度上,然后才能将这些图像输入神经网络。然而,下层取样可能导致图像质量的丧失,这在重建任务中尤其不可取,在重建任务中,需要保存精细的几何细节。在本文件中,我们建议高分辨率图像可以以粗略至平坦的方式重建,而深层学习算法只负责生成该图像的粗略代表,而该图像消耗中度GPU记忆。为了产生高分辨率结果,我们提出了两种新颖的方法:对粗度输出和等级图像合成进行学的 voxel重新排列。与粗糙的输出相比,高分辨率对应方可以平滑地进行表面三角测量,可以以最高的质量打印。本文的实验结果是在AutoImplant 2021(https://utomitimplain2021)/stemplical 数据集上进行实验,这是ARC-chemstremplical 2021.orgs a destal stremplain ex ex aviews a strubal ex a destation.crestremstrubal ex) ex.cal exbal exbal a ex a exbrestremstrubalbalbalbalbass.