磁共振成像超分辨率与部分扩散模型

Kai Zhao;Kaifeng Pang;Alex Ling Yu Hung;Haoxin Zheng;Ran Yan;Kyunghyun Sung
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摘要

扩散模型在各种图像生成任务中取得了令人印象深刻的性能,包括图像超分辨率。尽管扩散模型具有令人印象深刻的性能,但由于大量的去噪步骤,其计算成本很高。在本文中,我们提出了一种新的加速扩散模型,称为部分扩散模型(pdm),用于磁共振成像(MRI)超分辨率。我们观察到一对低分辨率和高分辨率图像的扩散电位在一定的噪声水平后逐渐收敛并变得难以区分。这启发我们使用一定的低分辨率潜势来近似相应的高分辨率潜势。通过近似,我们可以跳过部分扩散和去噪步骤,减少训练和推理的计算量。为了减轻近似误差,我们进一步引入了“潜在对齐”,它逐渐从低分辨率潜在中插值和接近高分辨率潜在。部分扩散模型与潜在对准相结合,从本质上建立了一个新的轨迹,其中潜在与原始扩散模型中的潜在不同,逐渐从低分辨率图像过渡到高分辨率图像。在三个MRI数据集上的实验表明,局部扩散模型比原始扩散模型的去噪步骤少得多,达到了竞争性的超分辨率质量。此外,它们可以与最近的加速扩散模型相结合,以进一步提高效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI Super-Resolution With Partial Diffusion Models
Diffusion models have achieved impressive performance on various image generation tasks, including image super-resolution. Despite their impressive performance, diffusion models suffer from high computational costs due to the large number of denoising steps. In this paper, we proposed a novel accelerated diffusion model, termed Partial Diffusion Models (PDMs), for magnetic resonance imaging (MRI) super-resolution. We observed that the latents of diffusing a pair of low- and high-resolution images gradually converge and become indistinguishable after a certain noise level. This inspires us to use certain low-resolution latent to approximate corresponding high-resolution latent. With the approximation, we can skip part of the diffusion and denoising steps, reducing the computation in training and inference. To mitigate the approximation error, we further introduced ‘latent alignment’ that gradually interpolates and approaches the high-resolution latents from the low-resolution latents. Partial diffusion models, in conjunction with latent alignment, essentially establish a new trajectory where the latents, unlike those in original diffusion models, gradually transition from low-resolution to high-resolution images. Experiments on three MRI datasets demonstrate that partial diffusion models achieve competetive super-resolution quality with significantly fewer denoising steps than original diffusion models. In addition, they can be incorporated with recent accelerated diffusion models to further enhance the efficiency.
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