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Improved Supervised Training of Physics-Guided Deep Learning Image Reconstruction with Multi-Masking

机译:改进了多掩模物理引导深层学习图像重建的监督培训

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Physics-guided deep learning (PG-DL) via algorithm unrolling has received significant interest for improved image reconstruction, including MRI applications. These methods unroll an iterative optimization algorithm into a series of regularizer and data consistency units. The unrolled networks are typically trained end-to-end using a supervised approach. Current supervised PG-DL approaches use all of the available sub-sampled measurements in their data consistency units. Thus, the network learns to fit the rest of the measurements. In this study, we propose to improve the performance and robustness of supervised training by utilizing randomness by retrospectively selecting only a subset of all the available measurements for data consistency units. The process is repeated multiple times using different random masks during training for further enhancement. Results on knee MRI show that the proposed multi-mask supervised PG-DL enhances reconstruction performance compared to conventional supervised PG-DL approaches.
机译:通过算法展开的物理引导的深度学习(PG-DL)对改进的图像重建具有显着兴趣,包括MRI应用程序。这些方法将迭代优化算法展开成为一系列常规器和数据一致性单元。展开的网络通常使用监督方法训练端到端。当前监督的PG-DL方法使用其数据一致性单元中的所有可用子采样测量。因此,网络学会符合其余的测量。在这项研究中,我们建议通过回顾性地选择数据一致性单位的所有可用测量的子集来提高监督培训的性能和稳健性。在培训期间使用不同的随机掩模重复该过程以进一步增强。膝关节MRI的结果表明,与传统的监督PG-DL方法相比,所提出的多掩模监督PG-DL增强了重建性能。

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