DiracDiffusion: Denoising and Incremental Reconstruction with Assured Data-Consistency.

Zalan Fabian, Berk Tinaz, Mahdi Soltanolkotabi
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Abstract

Diffusion models have established new state of the art in a multitude of computer vision tasks, including image restoration. Diffusion-based inverse problem solvers generate reconstructions of exceptional visual quality from heavily corrupted measurements. However, in what is widely known as the perception-distortion trade-off, the price of perceptually appealing reconstructions is often paid in declined distortion metrics, such as PSNR. Distortion metrics measure faithfulness to the observation, a crucial requirement in inverse problems. In this work, we propose a novel framework for inverse problem solving, namely we assume that the observation comes from a stochastic degradation process that gradually degrades and noises the original clean image. We learn to reverse the degradation process in order to recover the clean image. Our technique maintains consistency with the original measurement throughout the reverse process, and allows for great flexibility in trading off perceptual quality for improved distortion metrics and sampling speedup via early-stopping. We demonstrate the efficiency of our method on different high-resolution datasets and inverse problems, achieving great improvements over other state-of-the-art diffusion-based methods with respect to both perceptual and distortion metrics.

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DiracDiffusion:去噪和增量重建,确保数据一致性
在包括图像复原在内的众多计算机视觉任务中,扩散模型已确立了新的技术水平。基于扩散的逆问题求解器能从严重破坏的测量结果中生成视觉质量极高的重建图像。然而,在众所周知的 "感知-失真 "权衡中,具有感知吸引力的重构往往要以下降的失真指标(如 PSNR)为代价。失真度指标衡量的是对观察结果的忠实度,这是逆向问题的一个关键要求。在这项工作中,我们提出了一个新颖的逆问题求解框架,即我们假定观察结果来自一个随机退化过程,该过程会使原始清晰图像逐渐退化并产生噪声。我们要学会逆转退化过程,以恢复干净的图像。我们的技术能在整个逆向过程中保持与原始测量结果的一致性,并能通过早期停止,灵活地以感知质量换取改进的失真指标和采样速度。我们在不同的高分辨率数据集和逆向问题上展示了我们方法的效率,在感知和失真指标方面都比其他最先进的基于扩散的方法有了很大改进。
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