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Ea-GANs: Edge-Aware Generative Adversarial Networks for Cross-Modality MR Image Synthesis

机译:Ea-GAN:用于跨模态MR图像合成的边缘感知生成对抗网络

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Magnetic resonance (MR) imaging is a widely used medical imaging protocol that can be configured to provide different contrasts between the tissues in human body. By setting different scanning parameters, each MR imaging modality reflects the unique visual characteristic of scanned body part, benefiting the subsequent analysis from multiple perspectives. To utilize the complementary information from multiple imaging modalities, cross-modality MR image synthesis has aroused increasing research interest recently. However, most existing methods only focus on minimizing pixel/voxel-wise intensity difference but ignore the textural details of image content structure, which affects the quality of synthesized images. In this paper, we propose edge-aware generative adversarial networks (Ea-GANs) for cross-modality MR image synthesis. Specifically, we integrate edge information, which reflects the textural structure of image content and depicts the boundaries of different objects in images, to reduce this gap. Corresponding to different learning strategies, two frameworks are proposed, i.e., a generator-induced Ea-GAN (gEa-GAN) and a discriminator-induced Ea-GAN (dEa-GAN). The gEa-GAN incorporates the edge information via its generator, while the dEa-GAN further does this from both the generator and the discriminator so that the edge similarity is also adversarially learned. In addition, the proposed Ea-GANs are 3D-based and utilize hierarchical features to capture contextual information. The experimental results demonstrate that the proposed Ea-GANs, especially the dEa-GAN, outperform multiple state-of-the-art methods for cross-modality MR image synthesis in both qualitative and quantitative measures. Moreover, the dEa-GAN also shows excellent generality to generic image synthesis tasks on benchmark datasets about facades, maps, and cityscapes.
机译:磁共振(MR)成像是一种广泛使用的医学成像协议,可以配置为在人体组织之间提供不同的对比度。通过设置不同的扫描参数,每个MR成像方式都可以反映出被扫描身体部位的独特视觉特征,从而有利于从多个角度进行后续分析。为了利用来自多种成像模态的补充信息,跨模态MR图像合成近来引起了越来越多的研究兴趣。然而,大多数现有方法仅关注于最小化像素/体素方向的强度差异,而忽略了图像内容结构的纹理细节,这影响了合成图像的质量。在本文中,我们提出了用于跨模态MR图像合成的边缘感知生成对抗网络(Ea-GAN)。具体而言,我们整合了边缘信息,以反映图像内容的纹理结构并描绘图像中不同对象的边界,以缩小这种差距。对应于不同的学习策略,提出了两个框架,即生成器诱导的Ea-GAN(gEa-GAN)和鉴别器诱导的Ea-GAN(dEa-GAN)。 gEa-GAN通过其生成器合并边缘信息,而dEa-GAN进一步从生成器和鉴别器中进行边缘信息处理,因此还可以从对抗性上学习边缘相似性。另外,提出的Ea-GAN基于3D,并利用分层功能来捕获上下文信息。实验结果表明,所提出的Ea-GAN,尤其是dEa-GAN,在定性和定量方面均优于多种最新的交叉模态MR图像合成方法。此外,dEa-GAN在有关立面,地图和城市景观的基准数据集上对通用图像合成任务也显示出出色的通用性。

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