DS1 spectrogram: Enhancing Sample Generation of Diffusion Models using Noise Level Correction

Enhancing Sample Generation of Diffusion Models using Noise Level Correction

December 7, 20242412.05488

Authors

Abulikemu Abuduweili,Chenyang Yuan,Changliu Liu,Frank Permenter

Abstract

The denoising process of diffusion models can be interpreted as an approximate projection of noisy samples onto the data manifold. Moreover, the noise level in these samples approximates their distance to the underlying manifold.

Building on this insight, we propose a novel method to enhance sample generation by aligning the estimated noise level with the true distance of noisy samples to the manifold. Specifically, we introduce a noise level correction network, leveraging a pre-trained denoising network, to refine noise level estimates during the denoising process.

Additionally, we extend this approach to various image restoration tasks by integrating task-specific constraints, including inpainting, deblurring, super-resolution, colorization, and compressed sensing. Experimental results demonstrate that our method significantly improves sample quality in both unconstrained and constrained generation scenarios.

Notably, the proposed noise level correction framework is compatible with existing denoising schedulers (e.g., DDIM), offering additional performance improvements.

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