Assessing the capacity of a denoising diffusion probabilistic model to reproduce spatial context.

Rucha Deshpande, Muzaffer Ozbey, Hua Li, Mark A Anastasio, Frank J Brooks
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Abstract

Diffusion models have emerged as a popular family of deep generative models (DGMs). In the literature, it has been claimed that one class of diffusion models-denoising diffusion probabilistic models (DDPMs)-demonstrate superior image synthesis performance as compared to generative adversarial networks (GANs). To date, these claims have been evaluated using either ensemble-based methods designed for natural images, or conventional measures of image quality such as structural similarity. However, there remains an important need to understand the extent to which DDPMs can reliably learn medical imaging domain-relevant information, which is referred to as 'spatial context' in this work. To address this, a systematic assessment of the ability of DDPMs to learn spatial context relevant to medical imaging applications is reported for the first time. A key aspect of the studies is the use of stochastic context models (SCMs) to produce training data. In this way, the ability of the DDPMs to reliably reproduce spatial context can be quantitatively assessed by use of post-hoc image analyses. Error-rates in DDPM-generated ensembles are reported, and compared to those corresponding to other modern DGMs. The studies reveal new and important insights regarding the capacity of DDPMs to learn spatial context. Notably, the results demonstrate that DDPMs hold significant capacity for generating contextually correct images that are 'interpolated' between training samples, which may benefit data-augmentation tasks in ways that GANs cannot.

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评估去噪扩散概率模型再现空间背景的能力。
扩散模型已成为深度生成模型(DGM)的一个流行家族。有文献称,与生成式对抗网络(GANs)相比,一类扩散模型--失真扩散概率模型(DDPMs)--显示出更优越的图像合成性能。迄今为止,人们一直在使用为自然图像设计的基于集合的方法或传统的图像质量度量方法(如结构相似性)对这些说法进行评估。然而,我们仍然需要了解 DDPM 在多大程度上能够可靠地学习医学影像领域的相关信息(在本文中称为 "空间上下文")。为了解决这个问题,本报告首次系统地评估了 DDPMs 学习与医学成像应用相关的空间上下文的能力。研究的一个关键方面是使用随机上下文模型(SCM)生成训练数据。这样,就可以通过事后图像分析来定量评估 DDPMs 可靠地再现空间上下文的能力。报告了 DDPM 生成的集合的误差率,并与其他现代 DGM 对应的误差率进行了比较。这些研究揭示了有关 DDPM 学习空间上下文能力的重要新见解。值得注意的是,研究结果表明,DDPMs 在生成训练样本之间 "插值 "的正确图像方面具有很强的能力,这可能有利于数据扩充任务,而 GANs 则无法做到这一点。
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