银河系
天体物理学
物理
空格(标点符号)
相互作用星系
天文
星系形成与演化
计算机科学
操作系统
作者
Fucheng Zhong,Ruibiao Luo,N. R. Napolitano,C. Tortora,Rui Li,Xincheng Zhu,Valerio Busillo,L. V. E. Koopmans,Giuseppe Longo
标识
DOI:10.3847/1538-4365/ada609
摘要
Abstract We present a novel deep learning method to separately extract the two-dimensional flux information of the foreground galaxy (deflector) and background system (source) of galaxy–galaxy strong-lensing events using U-Net (GGSL-UNet for short). In particular, the segmentation of the source image is found to enhance the performance of the lens modeling, especially for ground-based images. By combining mock lens foreground+background components with real sky survey noise to train GGSL-UNet, we show it can correctly model the input image noise and extract the lens signal. However, the most important result of this work is that GGSL-UNet can accurately reconstruct real ground-based lensing systems from the Kilo-degree Survey in 1 s. We also test GGSL-UNet on space-based lenses from BELLS GALLERY, and obtain comparable accuracy to standard lens-modeling tools. Finally, we calculate the magnitudes from the reconstructed deflector and source images and use these to derive photometric redshifts (photo- z ), with the photo- z of the deflector well consistent with the spectroscopic ones. This first work demonstrates the great potential of the generative network for lens finding, image denoising, source segmentation, and decomposing and modeling of strong-lensing systems. For upcoming ground- and space-based surveys, GGSL-UNet can provide high-quality images as well as geometry and redshift information for precise lens modeling, in combination with classical Markov Chain Monte Carlo modeling for the best accuracy in galaxy–galaxy strong-lensing analysis.
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