DeepGalaxy: Deducing the Properties of Galaxy Mergers from Images Using Deep Neural Networks

M. Cai, Jeroen B'edorf, V. Saletore, V. Codreanu, Damian Podareanu, Adel Chaibi, P. X. Qian
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引用次数: 3

Abstract

Galaxy mergers, the dynamical process during which two galaxies collide, are among the most spectacular phenomena in the Universe. During this process, the two colliding galaxies are tidally disrupted, producing significant visual features that evolve as a function of time. These visual features contain valuable clues for deducing the physical properties of the galaxy mergers. In this work, we propose DeepGalaxy, a visual analysis framework trained to predict the physical properties of galaxy mergers based on their morphology. Based on an encoder-decoder architecture, DeepGalaxy encodes the input images to a compressed latent space z, and determines the similarity of images according to the latent-space distance. DeepGalaxy consists of a fully convolutional autoencoder (FCAE) which generates activation maps at its 3D latent-space, and a variational autoencoder (VAE) which compresses the activation maps into a 1D vector, and a classifier that generates labels from the activation maps. The backbone of the FCAE can be fully customized according to the complexity of the images. DeepGalaxy demonstrates excellent scaling performance on parallel machines. On the Endeavour supercomputer, the scaling efficiency exceeds 0.93 when trained on 128 workers, and it maintains above 0.73 when trained with 512 workers. Without having to carry out expensive numerical simulations, DeepGalaxy makes inferences of the physical properties of galaxy mergers directly from images, and thereby achieves a speedup factor of ~105.
DeepGalaxy:利用深度神经网络从图像中推断星系合并的特性
星系合并,即两个星系碰撞的动态过程,是宇宙中最壮观的现象之一。在这个过程中,两个碰撞的星系被潮汐性地破坏,产生了显著的视觉特征,这些特征随着时间的推移而演变。这些视觉特征包含了推断星系合并的物理特性的宝贵线索。在这项工作中,我们提出了DeepGalaxy,这是一个视觉分析框架,用于根据星系合并的形态预测其物理特性。DeepGalaxy基于编码器-解码器架构,将输入图像编码到压缩的潜在空间z,并根据潜在空间距离确定图像的相似性。DeepGalaxy由一个全卷积自编码器(FCAE)和一个变分自编码器(VAE)组成,前者可以在其三维潜在空间生成激活图,后者可以将激活图压缩成一维向量,还有一个分类器可以从激活图中生成标签。FCAE的主干可以根据图像的复杂程度完全定制。DeepGalaxy在并行机器上展示了出色的缩放性能。在奋进号超级计算机上,128人训练时的扩展效率超过0.93,512人训练时的扩展效率保持在0.73以上。DeepGalaxy无需进行昂贵的数值模拟,直接从图像中推断星系合并的物理性质,从而实现了~105的加速因子。
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