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Whole Image Synthesis Using a Deep Encoder-Decoder Network

机译:使用深度编码器-解码器网络进行全图像合成

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The synthesis of medical images is an intensity transformation of a given modality in a way that represents an acquisition with a different modality (in the context of MRI this represents the synthesis of images originating from different MR sequences). Most methods follow a patch-based approach, which is computationally inefficient during synthesis and requires some sort of 'fusion' to synthesize a whole image from patch-level results. In this paper, we present a whole image synthesis approach that relies on deep neural networks. Our architecture resembles those of encoder-decoder networks, which aims to synthesize a source MRI modality to an other target MRI modality. The proposed method is computationally fast, it doesn't require extensive amounts of memory, and produces comparable results to recent patch-based approaches.
机译:医学图像的合成是给定模态的强度转换,其方式表示具有不同模态的采集(在MRI的上下文中,这表示源自不同MR序列的图像的合成)。大多数方法遵循基于补丁的方法,该方法在合成过程中计算效率低下,并且需要某种“融合”才能从补丁级别的结果中合成整个图像。在本文中,我们提出了一种依赖于深度神经网络的完整图像合成方法。我们的架构类似于编码器/解码器网络的架构,其目的是将源MRI模态合成为其他目标MRI模态。所提出的方法计算速度快,不需要大量的内存,并且可以产生与最近的基于修补程序的方法可比的结果。

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