Score-based generative models have emerged as alternatives to generative adversarial networks (GANs) and normalizing flows for tasks involving learning and sampling from complex image distributions. In this work we investigate the ability of these models to generate fields in two astrophysical contexts: dark matter mass density fields from cosmological simulations and images of interstellar dust. We examine the fidelity of the sampled cosmological fields relative to the true fields using three different metrics, and identify potential issues to address. We demonstrate a proof-of-concept application of the model trained on dust in denoising dust images. To our knowledge, this is the first application of this class of models to the interstellar medium.
翻译:在这项工作中,我们调查了这些模型在两种天体物理环境中产生田间的能力:宇宙模拟中的暗物质质量密度场和星际尘埃的图像。我们使用三种不同的度量来检查抽样宇宙场相对于真实场域的准确性,并找出需要解决的潜在问题。我们展示了在粉尘粉尘粉尘图像脱色方面受过训练的模型的概念性应用。据我们所知,这是这一类模型首次应用于星际介质。