一种用于磁共振成像超分辨率的三播放器GAN

Qi Wang, Lucas Mahler, Julius Steiglechner, Florian Birk, K. Scheffler, G. Lohmann
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引用次数: 2

摘要

基于学习的单幅图像超分辨率(SISR)任务在二维图像中得到了很好的研究。然而,与2D相比,用于3D磁共振图像(MRI)的SISR更具挑战性,主要原因是神经网络参数数量增加,内存要求更大,可用训练数据数量有限。目前用于三维体图像的SISR方法基于生成对抗网络(GANs),特别是基于Wasserstein GANs的训练稳定性。2D领域的其他常见架构,例如变压器模型,需要大量的训练数据,因此不适合有限的3D数据。然而,Wasserstein gan可能存在问题,因为它们可能不会收敛到全局最优,从而产生模糊的结果。在此,我们提出了一种基于GAN框架的3D SR新方法。具体来说,我们使用实例噪声来平衡GAN训练。此外,我们在训练过程中使用了相对论GAN损失函数和更新特征提取器。我们表明,我们的方法产生高度精确的结果。我们还表明,我们只需要很少的训练样本。特别是,我们只需要不到30个样本,而不是在以前的研究中通常需要数千个训练样本。最后,我们展示了由我们的模型产生的改进的样本外结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Three-Player GAN for Super-Resolution in Magnetic Resonance Imaging
Learning based single image super resolution (SISR) task is well investigated in 2D images. However, SISR for 3D Magnetics Resonance Images (MRI) is more challenging compared to 2D, mainly due to the increased number of neural network parameters, the larger memory requirement and the limited amount of available training data. Current SISR methods for 3D volumetric images are based on Generative Adversarial Networks (GANs), especially Wasserstein GANs due to their training stability. Other common architectures in the 2D domain, e.g. transformer models, require large amounts of training data and are therefore not suitable for the limited 3D data. However, Wasserstein GANs can be problematic because they may not converge to a global optimum and thus produce blurry results. Here, we propose a new method for 3D SR based on the GAN framework. Specifically, we use instance noise to balance the GAN training. Furthermore, we use a relativistic GAN loss function and an updating feature extractor during the training process. We show that our method produces highly accurate results. We also show that we need very few training samples. In particular, we need less than 30 samples instead of thousands of training samples that are typically required in previous studies. Finally, we show improved out-of-sample results produced by our model.
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