Most deep learning models for computational imaging regress a single reconstructed image. In practice, however, ill-posedness, nonlinearity, model mismatch, and noise often conspire to make such point estimates misleading or insufficient. The Bayesian approach models images and (noisy) measurements as jointly distributed random vectors and aims to approximate the posterior distribution of unknowns. Recent variational inference methods based on conditional normalizing flows are a promising alternative to traditional MCMC methods, but they come with drawbacks: excessive memory and compute demands for moderate to high resolution images and underwhelming performance on hard nonlinear problems. In this work, we propose C-Trumpets -- conditional injective flows specifically designed for imaging problems, which greatly diminish these challenges. Injectivity reduces memory footprint and training time while low-dimensional latent space together with architectural innovations like fixed-volume-change layers and skip-connection revnet layers, C-Trumpets outperform regular conditional flow models on a variety of imaging and image restoration tasks, including limited-view CT and nonlinear inverse scattering, with a lower compute and memory budget. C-Trumpets enable fast approximation of point estimates like MMSE or MAP as well as physically-meaningful uncertainty quantification.
翻译:在实际操作中,错误的记忆和计算对中等至高分辨率图像的需求,以及在硬性非线性问题上的低偏差性性能。在这项工作中,我们建议C-Trumpets -- -- 专门为成象问题设计有条件的预测流 -- -- 有条件的预测流,以大大减轻这些挑战。 注射减少记忆足迹和培训时间,同时减少低维潜藏空间,同时与建筑创新如固定量变化层和高空连接流网层、C-Trumpets超越了成像和图像恢复任务的常规有条件流动模型,包括有限视图CT和不线性分散,作为快速的IMAP和快速的IMB-IMB-IMB-IMB-IMB-A-快速的量化模型。