Zero-Shot Adaptation for Approximate Posterior Sampling of Diffusion Models in Inverse Problems.

Yaşar Utku Alçalar, Mehmet Akçakaya
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Abstract

Diffusion models have emerged as powerful generative techniques for solving inverse problems. Despite their success in a variety of inverse problems in imaging, these models require many steps to converge, leading to slow inference time. Recently, there has been a trend in diffusion models for employing sophisticated noise schedules that involve more frequent iterations of timesteps at lower noise levels, thereby improving image generation and convergence speed. However, application of these ideas for solving inverse problems with diffusion models remain challenging, as these noise schedules do not perform well when using empirical tuning for the forward model log-likelihood term weights. To tackle these challenges, we propose zero-shot approximate posterior sampling (ZAPS) that leverages connections to zero-shot physics-driven deep learning. ZAPS fixes the number of sampling steps, and uses zero-shot training with a physics-guided loss function to learn log-likelihood weights at each irregular timestep. We apply ZAPS to the recently proposed diffusion posterior sampling method as baseline, though ZAPS can also be used with other posterior sampling diffusion models. We further approximate the Hessian of the logarithm of the prior using a diagonalization approach with learnable diagonal entries for computational efficiency. These parameters are optimized over a fixed number of epochs with a given computational budget. Our results for various noisy inverse problems, including Gaussian and motion deblurring, inpainting, and super-resolution show that ZAPS reduces inference time, provides robustness to irregular noise schedules and improves reconstruction quality. Code is available at https://github.com/ualcalar17/ZAPS.

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反问题中扩散模型近似后验抽样的零弹自适应。
扩散模型已经成为求解逆问题的强大生成技术。尽管它们在成像中的各种逆问题中取得了成功,但这些模型需要许多步骤才能收敛,导致推理时间较慢。最近,在扩散模型中有一种趋势,即采用复杂的噪声时间表,在较低的噪声水平下更频繁地迭代时间步长,从而提高图像生成和收敛速度。然而,将这些思想应用于解决扩散模型的逆问题仍然具有挑战性,因为这些噪声调度在使用前向模型对数似然项权重的经验调整时表现不佳。为了解决这些挑战,我们提出了零射击近似后验抽样(ZAPS),它利用了零射击物理驱动的深度学习的连接。ZAPS固定采样步数,并使用带有物理引导损失函数的零射击训练来学习每个不规则时间步的对数似然权值。我们将ZAPS应用于最近提出的扩散后验抽样方法作为基线,尽管ZAPS也可以用于其他后验抽样扩散模型。为了提高计算效率,我们使用具有可学习对角项的对角化方法进一步近似先验对数的Hessian。这些参数在给定计算预算的固定数量的epoch上进行优化。我们对各种噪声逆问题的结果,包括高斯和运动去模糊,修复和超分辨率表明,ZAPS减少了推理时间,提供了对不规则噪声调度的鲁棒性,并提高了重建质量。代码可从https://github.com/ualcalar17/ZAPS获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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