论文标题
Holismokes -II。使用卷积神经网络识别泛主角的星系尺度强力镜头
HOLISMOKES -- II. Identifying galaxy-scale strong gravitational lenses in Pan-STARRS using convolutional neural networks
论文作者
论文摘要
我们提出了一个系统的搜索,以进行广泛分离(爱因斯坦半径> 1.5英寸),星系尺度的强镜在北部天空的30 000平方英尺3PI调查中。长时间延迟延迟几天至几周,此类系统特别适合捕捉到强烈的镜头超级跨度的多个图像,并开放了多个图像,并开放了新的图像,并开放了新的图像,并启用了新的图像。光谱和宇宙学。我们通过绘制透镜的镜头来源的镜头源,透镜的镜头切口,透镜的发光红色星系,首先是SDSS的镜头,并识别出一个简单的神经网络的光镜头,其次,我们在Pan-Starrs GRI图像切口上训练卷积神经网络(CNN),以获得105760和12382镜头的集合,分数是pcnn> 0.5和> 0.9的分数。所有带有PCNN> 0.9的星系,以组装最终的330个高质量的新透镜候选者,同时恢复了23个已发表的系统,SDSS Spectroscopy在镜头中央区域证明了我们的方法正确地识别了Z〜0.1-0.7的范围。作为Z_S处的四倍成像的红色源= 1.185在Z_D = 0.3155处通过前景LRG镜头,我们希望本文中提出的有效和自动化的两步分类方法将适用于较深的GRI堆栈。
We present a systematic search for wide-separation (Einstein radius >1.5"), galaxy-scale strong lenses in the 30 000 sq.deg of the Pan-STARRS 3pi survey on the Northern sky. With long time delays of a few days to weeks, such systems are particularly well suited for catching strongly lensed supernovae with spatially-resolved multiple images and open new perspectives on early-phase supernova spectroscopy and cosmography. We produce a set of realistic simulations by painting lensed COSMOS sources on Pan-STARRS image cutouts of lens luminous red galaxies with known redshift and velocity dispersion from SDSS. First of all, we compute the photometry of mock lenses in gri bands and apply a simple catalog-level neural network to identify a sample of 1050207 galaxies with similar colors and magnitudes as the mocks. Secondly, we train a convolutional neural network (CNN) on Pan-STARRS gri image cutouts to classify this sample and obtain sets of 105760 and 12382 lens candidates with scores pCNN>0.5 and >0.9, respectively. Extensive tests show that CNN performances rely heavily on the design of lens simulations and choice of negative examples for training, but little on the network architecture. Finally, we visually inspect all galaxies with pCNN>0.9 to assemble a final set of 330 high-quality newly-discovered lens candidates while recovering 23 published systems. For a subset, SDSS spectroscopy on the lens central regions proves our method correctly identifies lens LRGs at z~0.1-0.7. Five spectra also show robust signatures of high-redshift background sources and Pan-STARRS imaging confirms one of them as a quadruply-imaged red source at z_s = 1.185 strongly lensed by a foreground LRG at z_d = 0.3155. In the future, we expect that the efficient and automated two-step classification method presented in this paper will be applicable to the deeper gri stacks from the LSST with minor adjustments.