成像体模
深度学习
计算机科学
人工智能
平滑度
一致性(知识库)
噪音(视频)
合成数据
数据一致性
加速度
算法
物理
图像(数学)
数学
光学
数学分析
经典力学
操作系统
作者
Alfredo De Goyeneche,Shreya Ramachandran,Ke Wang,Ekin Karasan,Stella X. Yu,Michael Lustig
摘要
We propose a physics-inspired, unrolled-deep-learning framework for off-resonance correction. Our forward model includes coil sensitivities, multi-frequency bins, and non-uniform Fourier transforms hence compatible with fat/water imaging and parallel imaging acceleration. The network, which includes data-consistency terms and CNN modules serving as proximal operators, is trained end-to-end using only synthetic random field maps, coil sensitivities, and noise-like images with statistics (smoothness) mimicking natural signals. Our aim is to train the network to reverse off-resonance irrespective of the type of imaging, and hence generalizable to any anatomy and contrast without retraining. We demonstrate initial results in simulations, phantom, and in-vivo data.
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