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MR Slice Profile Estimation by Learning to Match Internal Patch Distributions

机译:通过学习匹配内部修补程序分布,MR Slice简介估计

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To super-resolve the through-plane direction of a multi-slice 2D magnetic resonance (MR) image, its slice selection profile can be used as the degeneration model from high resolution (HR) to low resolution (LR) to create paired data when training a supervised algorithm. Existing super-resolution algorithms make assumptions about the slice selection profile since it is not readily known for a given image. In this work, we estimate a slice selection profile given a specific image by learning to match its internal patch distributions. Specifically, we assume that after applying the correct slice selection profile, the image patch distribution along HR in-plane directions should match the distribution along the LR through-plane direction. Therefore, we incorporate the estimation of a slice selection profile as part of learning a generator in a generative adversarial network (GAN). In this way, the slice selection profile can be learned without any external data. Our algorithm was tested using simulations from isotropic MR images, incorporated in a through-plane super-resolution algorithm to demonstrate its benefits, and also used as a tool to measure image resolution.
机译:为了超级解析多切片2D磁共振(MR)图像的贯穿平面方向,其切片选择配置文件可用作从高分辨率(HR)到低分辨率(LR)的退化模型,以创建配对数据培训监督算法。现有的超分辨率算法对切片选择简档进行假设,因为它不可用于给定图像。在这项工作中,我们通过学习匹配其内部修补程序分布来估计特定图像的切片选择简档。具体地,我们假设在应用正确的切片选择轮廓之后,沿着HR面内方向的图像贴片分布应沿着LR穿过平面方向匹配分布。因此,我们纳入了切片选择简档的估计,作为在生成的对抗网络(GaN)中学习发电机的一部分。以这种方式,可以在没有任何外部数据的情况下学习切片选择配置文件。使用来自各向同性MR图像的模拟测试了我们的算法,该算法包含在贯穿平面超分辨率算法中,以展示其优点,并且还用作测量图像分辨率的工具。

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