A deep neural network approach to compact source removal

IF 5.8 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS Astronomy & Astrophysics Pub Date : 2025-04-01 DOI:10.1051/0004-6361/202453262
M. Madarász, G. Marton, I. Gezer, S. Lehner, J. Roquette, M. Audard, D. Hernandez, O. Dionatos
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Abstract

Context. Analyzing extended emission in photometric observations of star-forming regions requires maps free from compact foreground, embedded, and background sources, which can interfere with various techniques used to characterize the interstellar medium. Within the framework of the NEMESIS project, we applied machine-learning techniques to improve our understanding of the star formation timescales, which involves the unbiased analysis of the extended emission in these regions.Aims. We present a deep learning-based method for separating the signals of compact sources and extended emission in photometric observations made by the Herschel Space Observatory, facilitating the analysis of extended emission and improving the photometry of compact sources.Methods. Central to our approach is a modified U-Net architecture with partial convolutional layers. This method enables effective source removal and background estimation across various flux densities, using a series of partial convolutional layers, batch normalization, and ReLU activation layers within blocks. Our training process utilized simulated sources injected into Herschel images, with controlled flux densities against known backgrounds. A dynamic, signal-to-noise ratio (S/N)-based adaptive masking system was implemented to assess how prominently a compact source stands out from the surrounding background.Results. The results demonstrate that our method can significantly improve the photometric accuracy in the presence of highly fluctuating backgrounds. Moreover, the approach can preserve all characteristics of the images, including the noise properties.Conclusions. The presented approach allows users to analyze extended emission without the interference of disturbing point sources or perform more precise photometry of sources located in complex environments. We also provide a Python tool with tutorials and examples to help the community effectively utilize this method.
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一种基于深度神经网络的紧凑源去除方法
上下文。在恒星形成区域的光度观测中分析扩展发射需要没有紧凑前景、嵌入和背景源的地图,这些源可能会干扰用于表征星际介质的各种技术。在NEMESIS项目的框架内,我们应用机器学习技术来提高我们对恒星形成时间尺度的理解,这涉及到对这些区域扩展发射的无偏分析。本文提出了一种基于深度学习的赫歇尔空间天文台光度观测中致密源和扩展发射信号的分离方法,方便了扩展发射的分析,改进了致密源的光度学。我们方法的核心是一个带有部分卷积层的改进U-Net架构。该方法通过在块内使用一系列部分卷积层、批处理归一化层和ReLU激活层,可以有效地去除各种通量密度的源和背景估计。我们的训练过程利用模拟源注入到赫歇尔图像中,在已知背景下控制通量密度。实现了一个动态的、基于信噪比(S/N)的自适应掩蔽系统,以评估紧凑源从周围背景中脱颖而出的突出程度。结果表明,该方法可以显著提高背景高度波动情况下的测光精度。此外,该方法可以保留图像的所有特征,包括噪声特性。所提出的方法允许用户在没有干扰点源干扰的情况下分析扩展发射,或者对位于复杂环境中的源进行更精确的光度测定。我们还提供了一个Python工具,其中包含教程和示例,以帮助社区有效地利用这种方法。
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来源期刊
Astronomy & Astrophysics
Astronomy & Astrophysics 地学天文-天文与天体物理
CiteScore
10.20
自引率
27.70%
发文量
2105
审稿时长
1-2 weeks
期刊介绍: Astronomy & Astrophysics is an international Journal that publishes papers on all aspects of astronomy and astrophysics (theoretical, observational, and instrumental) independently of the techniques used to obtain the results.
期刊最新文献
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