We propose a new approach for large-scale high-dynamic range computational imaging. Deep Neural Networks (DNNs) trained end-to-end can solve linear inverse imaging problems almost instantaneously. While unfolded architectures provide necessary robustness to variations of the measurement setting, embedding large-scale measurement operators in DNN architectures is impractical. Alternative Plug-and-Play (PnP) approaches, where the denoising DNNs are blind to the measurement setting, have proven effective to address scalability and high-dynamic range challenges, but rely on highly iterative algorithms. We propose a residual DNN series approach, where the reconstructed image is built as a sum of residual images progressively increasing the dynamic range, and estimated iteratively by DNNs taking the back-projected data residual of the previous iteration as input. We demonstrate on simulations for radio-astronomical imaging that a series of only few terms provides a high-dynamic range reconstruction of similar quality to state-of-the-art PnP approaches, at a fraction of the cost.
翻译:我们为大型高动态范围计算成像提出了一种新的方法。深神经网络(DNN)经过培训的终端到终端可以几乎瞬间解决线性反成像问题。虽然展开的建筑为测量设置的变化提供了必要的稳健性,但将大型测量操作员嵌入 DNN 结构是不切实际的。替代的插图和插图(PnP)方法,在这种方法中,被拆除的DNNN对测量设置视而不见,已证明有效解决可缩放和高动态范围的挑战,但依靠高迭代算法。我们建议了残余的DNNN系列方法,在这个方法中,重建的图像是作为残余图像的组合,逐渐增加动态范围,并由DNNS对先前迭接的迭代估算,将先前迭代的迭代数据残存作为投入。我们演示无线电天文成像的模拟,只有为数不多的几条术语提供了与最先进的PnP方法类似质量的高动态范围重建,其成本的一小部分。