Denoising diffusion models have recently emerged as a powerful class of generative models. They provide state-of-the-art results, not only for unconditional simulation, but also when used to solve conditional simulation problems arising in a wide range of inverse problems. A limitation of these models is that they are computationally intensive at generation time as they require simulating a diffusion process over a long time horizon. When performing unconditional simulation, a Schr\"odinger bridge formulation of generative modeling leads to a theoretically grounded algorithm shortening generation time which is complementary to other proposed acceleration techniques. We extend the Schr\"odinger bridge framework to conditional simulation. We demonstrate this novel methodology on various applications including image super-resolution, optimal filtering for state-space models and the refinement of pre-trained networks. Our code can be found at https://github.com/vdeborto/cdsb.
翻译:最近出现了一个强大的基因模型类别,这些模型不仅用于无条件模拟,而且用于解决一系列反问题中产生的有条件模拟问题时,都提供了最先进的结果。这些模型的局限性在于,当它们需要长期模拟扩散过程时,在代际时间里,它们在计算上是密集的。在进行无条件模拟时,基因模型的“干”桥配方导致一种理论上的计算法缩短生成时间,从而补充其他提议的加速技术。我们把Schr\'odinger桥框架扩大到有条件模拟。我们展示了这种新方法,涉及各种应用,包括图像超分辨率、国家空间模型的最佳过滤以及事先训练过的网络的完善。我们的代码可以在https://github./vdeborto/cdsb找到。