Cleaning our own dust: simulating and separating galactic dust foregrounds with neural networks

K. Aylor, M. Haq, L. Knox, Y. Hezaveh, L. Perreault-Levasseur
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引用次数: 15

Abstract

Separating galactic foreground emission from maps of the cosmic microwave background (CMB), and quantifying the uncertainty in the CMB maps due to errors in foreground separation are important for avoiding biases in scientific conclusions. Our ability to quantify such uncertainty is limited by our lack of a model for the statistical distribution of the foreground emission. Here we use a Deep Convolutional Generative Adversarial Network (DCGAN) to create an effective non-Gaussian statistical model for intensity of emission by interstellar dust. For training data we use a set of dust maps inferred from observations by the Planck satellite. A DCGAN is uniquely suited for such unsupervised learning tasks as it can learn to model a complex non-Gaussian distribution directly from examples. We then use these simulations to train a second neural network to estimate the underlying CMB signal from dust-contaminated maps. We discuss other potential uses for the trained DCGAN, and the generalization to polarized emission from both dust and synchrotron.
清理我们自己的尘埃:用神经网络模拟和分离星系尘埃前景
将星系前景辐射从宇宙微波背景图中分离出来,并量化宇宙微波背景图中由于前景分离误差而产生的不确定性,对于避免科学结论的偏差具有重要意义。我们量化这种不确定性的能力受到限制,因为我们缺乏前景辐射统计分布的模型。在这里,我们使用深度卷积生成对抗网络(DCGAN)来创建星际尘埃发射强度的有效非高斯统计模型。对于训练数据,我们使用了一组由普朗克卫星观测推断的尘埃图。DCGAN特别适合于这种无监督学习任务,因为它可以直接从示例中学习建立复杂的非高斯分布模型。然后,我们使用这些模拟来训练第二个神经网络,以估计来自尘埃污染地图的潜在CMB信号。我们讨论了训练后的DCGAN的其他潜在用途,以及对尘埃和同步加速器极化发射的推广。
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