论文标题

深度学习进行强烈的镜头搜索:卷积神经网络和孩子的新候选人的测试DR3

Deep Learning for Strong Lensing Search: Tests of the Convolutional Neural Networks and New Candidates from KiDS DR3

论文作者

He, Zizhao, Er, Xinzhong, Long, Qian, Liu, Dezi, Liu, Xiangkun, Li, Ziwei, Liu, Yun, Deng, Wenqaing, Fan, Zuhui

论文摘要

卷积中性网络已成功地用于搜索强烈的镜头系统,从而从大型调查中发现了新候选者。另一方面,仍然缺乏有关其鲁棒性的系统调查。在本文中,我们首先构建了一个中性网络,并将其应用于Kilo Leger调查(儿童)数据版本3的$ r $ band图像,以搜索强镜头系统。我们构建了两组训练样本,一个是通过模拟完全制作的,另一个是使用儿童观测的LRG邮票作为前景镜头图像。有了以前的训练样本,我们发现了48个较高的候选人在人类检查后,其中有27个是新鉴定的。使用后一个训练集,还发现了上述48个候选者中约67%,并且还确定了11个新的强镜头候选者。然后,我们对PSF的变化进行了有关网络性能的鲁棒性的测试。使用PSF构建的测试样品的训练样本中位PSF的范围为0.4至2倍,我们发现我们的网络的性能相当稳定,并且降解很小。我们还研究了训练集的数量如何通过将网络性能从100万到80万人不等。输出结果相当稳定,表明在被考虑的范围内,我们的网络性能对音量大小不太敏感。

Convolutional Neutral Networks have been successfully applied in searching for strong lensing systems, leading to discoveries of new candidates from large surveys. On the other hand, systematic investigations about their robustness are still lacking. In this paper, we first construct a neutral network, and apply it to $r$-band images of Luminous Red Galaxies (LRGs) of the Kilo Degree Survey (KiDS) Data Release 3 to search for strong lensing systems. We build two sets of training samples, one fully from simulations, and the other one using the LRG stamps from KiDS observations as the foreground lens images. With the former training sample, we find 48 high probability candidates after human-inspection, and among them, 27 are newly identified. Using the latter training set, about 67\% of the aforementioned 48 candidates are also found, and there are 11 more new strong lensing candidates identified. We then carry out tests on the robustness of the network performance with respect to the variation of PSF. With the testing samples constructed using PSF in the range of 0.4 to 2 times of the median PSF of the training sample, we find that our network performs rather stable, and the degradation is small. We also investigate how the volume of the training set can affect our network performance by varying it from 0.1 millions to 0.8 millions. The output results are rather stable showing that within the considered range, our network performance is not very sensitive to the volume size.

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