Louisa Canepa, Sarah Brough, Francois Lanusse, Mireia Montes and Nina Hatch
{"title":"Measuring the Intracluster Light Fraction with Machine Learning","authors":"Louisa Canepa, Sarah Brough, Francois Lanusse, Mireia Montes and Nina Hatch","doi":"10.3847/1538-4357/adabc7","DOIUrl":null,"url":null,"abstract":"The intracluster light (ICL) is an important tracer of a galaxy cluster’s history and past interactions. However, only small samples have been studied to date due to its very low surface brightness and the heavy manual involvement required for the majority of measurement algorithms. Upcoming large imaging surveys such as the Vera C. Rubin Observatory’s Legacy Survey of Space and Time (LSST) are expected to vastly expand available samples of deep cluster images. However, to process this increased amount of data, we need faster, fully automated methods to streamline the measurement process. This paper presents a machine learning model designed to automatically measure the ICL fraction in large samples of images, with no manual preprocessing required. We train the fully supervised model on a training data set of 50,000 images with injected artificial ICL profiles. We then transfer its learning onto real data by fine-tuning with a sample of 101 real clusters with their ICL fraction measured manually using the surface brightness threshold method. With this process, the model is able to effectively learn the task and then adapt its learning to real cluster images. Our model can be directly applied to Hyper Suprime-Cam images, processing up to 500 images in a matter of seconds on a single GPU, or fine-tuned for other imaging surveys such as LSST, with the fine-tuning process taking just 3 minutes. The model could also be retrained to match other ICL measurement methods. Our model and the code for training it are made available on GitHub.","PeriodicalId":501813,"journal":{"name":"The Astrophysical Journal","volume":"49 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2025-02-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"The Astrophysical Journal","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3847/1538-4357/adabc7","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The intracluster light (ICL) is an important tracer of a galaxy cluster’s history and past interactions. However, only small samples have been studied to date due to its very low surface brightness and the heavy manual involvement required for the majority of measurement algorithms. Upcoming large imaging surveys such as the Vera C. Rubin Observatory’s Legacy Survey of Space and Time (LSST) are expected to vastly expand available samples of deep cluster images. However, to process this increased amount of data, we need faster, fully automated methods to streamline the measurement process. This paper presents a machine learning model designed to automatically measure the ICL fraction in large samples of images, with no manual preprocessing required. We train the fully supervised model on a training data set of 50,000 images with injected artificial ICL profiles. We then transfer its learning onto real data by fine-tuning with a sample of 101 real clusters with their ICL fraction measured manually using the surface brightness threshold method. With this process, the model is able to effectively learn the task and then adapt its learning to real cluster images. Our model can be directly applied to Hyper Suprime-Cam images, processing up to 500 images in a matter of seconds on a single GPU, or fine-tuned for other imaging surveys such as LSST, with the fine-tuning process taking just 3 minutes. The model could also be retrained to match other ICL measurement methods. Our model and the code for training it are made available on GitHub.
星系团内光(ICL)是星系团历史和过去相互作用的重要示踪剂。然而,由于其表面亮度非常低,并且大多数测量算法需要大量的人工参与,迄今为止只研究了小样本。即将到来的大型成像调查,如Vera C. Rubin天文台的遗留空间和时间调查(LSST),有望极大地扩展深星团图像的可用样本。然而,为了处理这些增加的数据量,我们需要更快、完全自动化的方法来简化测量过程。本文提出了一种机器学习模型,旨在自动测量大量图像样本中的ICL分数,无需手动预处理。我们在50,000张带有注入人工ICL轮廓的图像的训练数据集上训练完全监督模型。然后,我们通过对101个真实簇的样本进行微调,并使用表面亮度阈值方法手动测量它们的ICL分数,将其学习转移到真实数据上。通过这个过程,该模型能够有效地学习任务,然后将其学习适应于真实的聚类图像。我们的模型可以直接应用于Hyper prime- cam图像,在单个GPU上处理多达500张图像只需几秒钟,或者对其他成像调查(如LSST)进行微调,微调过程只需3分钟。该模型也可以被重新训练以匹配其他ICL测量方法。我们的模型和训练它的代码可以在GitHub上获得。