论文标题

Co-vegan:用于压缩感知MR图像重建的复合价值生成对抗网络

Co-VeGAN: Complex-Valued Generative Adversarial Network for Compressive Sensing MR Image Reconstruction

论文作者

Vasudeva, Bhavya, Deora, Puneesh, Bhattacharya, Saumik, Pradhan, Pyari Mohan

论文摘要

压缩传感(CS)被广泛用于减少磁共振成像(MRI)的采集时间。尽管最先进的基于深度学习的方法已经能够获得CS-MR图像的快速,高质量的重建,但它们的主要缺点是它们将复杂价值的MRI数据视为现实价值的实体。大多数方法要么从复杂价值实体中提取大小,要么将它们作为两个实值通道串联。在这两种情况下,都丢弃了复杂值实体的真实部分和虚构部分的相位内容。为了解决真实价值的深网的基本问题,即它们无法处理复杂值数据的数据,我们提出了一个基于复杂价值的生成对抗网络(Co-vegan)的新框架。我们的模型可以处理复杂值输入,从而使其能够对CS-MR图像进行高质量的重建。此外,考虑到该相是复杂值实体的关键组成部分,我们提出了一种新型的复合物值激活函数,该功能对输入的相位敏感。使用各种采样掩码对不同数据集的拟议方法的广泛评估表明,所提出的模型在峰值信噪比和结构相似性指数方面显着优于现有的CS-MRI重建技术。此外,与基于深度学习的方法相比,它使用的是明显更少的可训练参数。

Compressive sensing (CS) is widely used to reduce the acquisition time of magnetic resonance imaging (MRI). Although state-of-the-art deep learning based methods have been able to obtain fast, high-quality reconstruction of CS-MR images, their main drawback is that they treat complex-valued MRI data as real-valued entities. Most methods either extract the magnitude from the complex-valued entities or concatenate them as two real-valued channels. In both the cases, the phase content, which links the real and imaginary parts of the complex-valued entities, is discarded. In order to address the fundamental problem of real-valued deep networks, i.e. their inability to process complex-valued data, we propose a novel framework based on a complex-valued generative adversarial network (Co-VeGAN). Our model can process complex-valued input, which enables it to perform high-quality reconstruction of the CS-MR images. Further, considering that phase is a crucial component of complex-valued entities, we propose a novel complex-valued activation function, which is sensitive to the phase of the input. Extensive evaluation of the proposed approach on different datasets using various sampling masks demonstrates that the proposed model significantly outperforms the existing CS-MRI reconstruction techniques in terms of peak signal-to-noise ratio as well as structural similarity index. Further, it uses significantly fewer trainable parameters to do so, as compared to the real-valued deep learning based methods.

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