Decreasing magnetic resonance (MR) image acquisition times can potentially make MR examinations more accessible. Prior arts including the deep learning models have been devoted to solving the problem of long MRI imaging time. Recently, deep generative models have exhibited great potentials in algorithm robustness and usage flexibility. Nevertheless, none of existing schemes can be learned or employed to the k-space measurement directly. Furthermore, how do the deep generative models work well in hybrid domain is also worth being investigated. In this work, by taking advantage of the deep energy-based models, we propose a k-space and image domain collaborative generative model to comprehensively estimate the MR data from under-sampled measurement. Experimental comparisons with the state-of-the-arts demonstrated that the proposed hybrid method has less error in reconstruction accuracy and is more stable under different acceleration factors
翻译:先前的艺术,包括深学习模型,都致力于解决长期磁共振成像时间的问题。最近,深层基因化模型在算法稳健性和使用灵活性方面展现了巨大的潜力。然而,现有的任何计划都无法直接学习或用于k-空间测量。此外,在混合领域深层基因化模型如何在混合领域运作良好,也值得调查。在这项工作中,我们利用深厚的能源模型,提出了K-空间和图像域协作基因化模型,以全面估计从抽样不足的测量中得出的MR数据。实验性比较表明,拟议的混合方法在重建准确性方面差小,在不同加速因素下更稳定。