Over the last two decades, around 300 quasars have been discovered at $z\gtrsim6$, yet only one has identified as being strongly gravitationally lensed. We explore a new approach -- enlarging the permitted spectral parameter space, while introducing a new spatial geometry veto criterion -- which is implemented via image-based deep learning. We first apply this approach to a systematic search for reionization-era lensed quasars, using data from the Dark Energy Survey, the Visible and Infrared Survey Telescope for Astronomy Hemisphere Survey, and the Wide-field Infrared Survey Explorer.Our search method consists of two main parts: (i) the preselection of the candidates based on their spectral energy distributions (SEDs) using catalog-level photometry and (ii) relative probabilities calculation of the candidates being a lens or some contaminant, utilizing a convolutional neural network (CNN) classification. The training data sets are constructed by painting deflected point-source lights over actual galaxy images, to generate realistic galaxy-quasar lens models, optimized to find systems with small image separations, i.e., Einstein radii of $\theta_\mathrm{E} \leq 1$ arcsec. Visual inspection is then performed for sources with CNN scores of $P_\mathrm{lens} > 0.1$, which leads us to obtain 36 newly selected lens candidates, which are awaiting spectroscopic confirmation. These findings show that automated SED modeling and deep learning pipelines, supported by modest human input, are a promising route for detecting strong lenses from large catalogs that can overcome the veto limitations of primarily dropout-based SED selection approaches.
翻译:在过去20年中,以 $z\ gtrsim 6 $z\ gtrsim6 发现了大约300 夸撒, 大约300 夸撒 以 $z\ gtrsim 6 $z\ gtrsim6 $gtrsm 发现, 但只有 一种被确认为强烈引力透镜。 我们探索了一种新的方法 -- -- 扩大允许的光谱参数空间,同时引入新的空间几何否决权标准 -- -- 这是通过基于图像的深层学习来实施的。 我们首先将这种方法应用于系统搜索再生电离子- 时代透镜的象数, 利用暗能量调查、 天体天文学半球调查的可见和红外调查望远镜的可见光源, 生成现实的星系- 深色透镜模型, 优化候选人根据光谱能量分布的预选取(SEDD) 和 Srentral_ sral 进行图像的预选取。