通过自适应嵌入和集合实现图像去噪的刺激扩散模型

Tong Li, Hansen Feng, Lizhi Wang, Lin Zhu, Zhiwei Xiong, Hua Huang
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引用次数: 0

摘要

图像去噪是计算摄影中的一个基本问题,实现高感知、低失真的要求很高。目前的方法要么难以达到感知质量,要么失真严重。最近,新兴的扩散模型在各种任务中取得了最先进的性能,在图像去噪方面展现出巨大的潜力。然而,激励扩散模型用于图像去噪并不简单,需要解决几个关键问题。首先,输入的不一致性阻碍了扩散模型与图像去噪之间的联系。另外,生成的图像与所需去噪图像之间的内容不一致也会带来失真。为了解决这些问题,我们从去噪的角度来理解和重新思考扩散模型,提出了一种名为 "图像去噪扩散模型(DMID)"的新策略。我们的 DMID 策略包括一种自适应嵌入方法和一种自适应集合方法,前者可将噪声图像嵌入预先训练好的无条件扩散模型,后者可减少去噪图像的失真。我们的 DMID 策略在基于失真和基于感知的指标上都达到了最先进的性能,适用于高斯图像和真实世界图像的去噪。代码见 https://github.com/Li-Tong-621/DMID。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stimulating Diffusion Model for Image Denoising via Adaptive Embedding and Ensembling.

Image denoising is a fundamental problem in computational photography, where achieving high perception with low distortion is highly demanding. Current methods either struggle with perceptual quality or suffer from significant distortion. Recently, the emerging diffusion model has achieved state-of-the-art performance in various tasks and demonstrates great potential for image denoising. However, stimulating diffusion models for image denoising is not straightforward and requires solving several critical problems. For one thing, the input inconsistency hinders the connection between diffusion models and image denoising. For another, the content inconsistency between the generated image and the desired denoised image introduces distortion. To tackle these problems, we present a novel strategy called the Diffusion Model for Image Denoising (DMID) by understanding and rethinking the diffusion model from a denoising perspective. Our DMID strategy includes an adaptive embedding method that embeds the noisy image into a pre-trained unconditional diffusion model and an adaptive ensembling method that reduces distortion in the denoised image. Our DMID strategy achieves state-of-the-art performance on both distortion-based and perception-based metrics, for both Gaussian and real-world image denoising. The code is available at https://github.com/Li-Tong-621/DMID.

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