Generative networks such as normalizing flows can serve as a learning-based prior to augment inverse problems to achieve high-quality results. However, the latent space vector may not remain a typical sample from the desired high-dimensional standard Gaussian distribution when traversing the latent space during an inversion. As a result, it can be challenging to attain a high-fidelity solution, particularly in the presence of noise and inaccurate physics-based models. To address this issue, we propose to re-parameterize and Gaussianize the latent vector using novel differentiable data-dependent layers wherein custom operators are defined by solving optimization problems. These proposed layers enforce an inversion to find a feasible solution within a Gaussian typical set of the latent space. We tested and validated our technique on an image deblurring task and eikonal tomography -- a PDE-constrained inverse problem and achieved high-fidelity results.
翻译:正常流等生成网络可以作为学习基础,在增加反向问题之前,实现高质量的结果。然而,潜伏空间矢量在翻转期间穿越潜伏空间时,可能不会成为理想的高维标准分布的典型样本。因此,要找到高不洁的解决方案,特别是遇到噪音和不精确的物理模型,可能具有挑战性。为解决这一问题,我们提议利用新颖的不同的数据依赖层对潜伏矢量进行重新计分和高斯亚化,其中根据数据界定了用户的优化问题。这些拟议层实施逆向,以便在典型的高斯潜伏空间中找到可行的解决方案。我们测试并验证了我们关于图像分解任务和电离层摄影的技术,这是一个受PDE制约的逆向问题,并取得了高离谱结果。