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Multi-scale GANs for Memory-efficient Generation of High Resolution Medical Images

机译:用于记忆有效生成高分辨率医学图像的多尺度GAN

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Currently generative adversarial networks (GANs) are rarely applied to medical images of large sizes, especially 3D volumes, due to their large computational demand. We propose a novel multi-scale patch-based GAN approach to generate large high resolution 2D and 3D images. Our key idea is to first learn a low-resolution version of the image and then generate patches of successively growing resolutions conditioned on previous scales. In a domain translation use-case scenario, 3D thorax CTs of size 512~3 and thorax X-rays of size 20482 are generated and we show that, due to the constant GPU memory demand of our method, arbitrarily large images of high resolution can be generated. Moreover, compared to common patch-based approaches, our multi-resolution scheme enables better image quality and prevents patch artifacts.
机译:目前,由于其庞大的计算需求,生成对抗网络(GAN)很少应用于大尺寸,尤其是3D体积的医学图像。我们提出了一种新颖的基于多尺度补丁的GAN方法来生成高分辨率的2D和3D图像。我们的关键思想是,首先学习图像的低分辨率版本,然后生成以先前比例为条件的,分辨率逐步提高的补丁。在域翻译用例场景中,生成了大小为512〜3的3D胸部CT和大小为20482的胸部X射线,并且我们证明,由于我们的方法对GPU内存的需求不断,高分辨率的任意大图像都可以被生成。此外,与常见的基于补丁的方法相比,我们的多分辨率方案可实现更好的图像质量并防止补丁伪影。

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