High-resolution magnetic resonance images can provide fine-grained anatomical information, but acquiring such data requires a long scanning time. In this paper, a framework called the Fused Attentive Generative Adversarial Networks(FA-GAN) is proposed to generate the super-resolution MR image from low-resolution magnetic resonance images, which can reduce the scanning time effectively but with high resolution MR images. In the framework of the FA-GAN, the local fusion feature block, consisting of different three-pass networks by using different convolution kernels, is proposed to extract image features at different scales. And the global feature fusion module, including the channel attention module, the self-attention module, and the fusion operation, is designed to enhance the important features of the MR image. Moreover, the spectral normalization process is introduced to make the discriminator network stable. 40 sets of 3D magnetic resonance images (each set of images contains 256 slices) are used to train the network, and 10 sets of images are used to test the proposed method. The experimental results show that the PSNR and SSIM values of the super-resolution magnetic resonance image generated by the proposed FA-GAN method are higher than the state-of-the-art reconstruction methods.
翻译:高分辨率磁共振成像可以提供精细的解剖信息,但获取这些数据需要很长的扫描时间。 在本文中,提议了一个称为FUD Attive Evention Adversarial Networks(FA-GAN)的框架,用低分辨率磁共振成像生成超分辨率MR图像,通过低分辨率磁共振成像生成超分辨率MR图像,这可以有效减少扫描时间,但使用高分辨率MR图像。在FA-GAN的框架内,使用由不同组合内核的不同三通网络组成的本地聚变特征块(每套图像包含256片)来培训网络,并使用10套图像来测试拟议方法。实验结果显示,PSNR和SSIM的G-SAVA-S-Restion方法比磁共振成像的磁共振成像的高级再造影法,而磁共振成像法则比磁共振成的磁共振成像法。