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Convolutional Neural Networks for Spectroscopic Redshift Estimation on Euclid Data

机译:欧洲欧元数据光谱红移估算卷积神经网络

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In this paper, we address the problem of spectroscopic redshift estimation in Astronomy. Due to the expansion of the Universe, galaxies recede from each other on average. This movement causes the emitted electromagnetic waves to shift from the blue part of the spectrum to the red part, due to the Doppler effect. Redshift is one of the most important observables in Astronomy, allowing the measurement of galaxy distances. Several sources of noise render the estimation process far from trivial, especially in the low signal-to-noise regime of many astrophysical observations. In recent years, new approaches for a reliable and automated estimation methodology have been sought out, in order to minimize our reliance on currently popular techniques that heavily involve human intervention. The fulfilment of this task has evolved into a grave necessity, in conjunction with the insatiable generation of immense amounts of astronomical data. In our work, we introduce a novel approach based on Deep Convolutional Neural Networks. The proposed methodology is extensively evaluated on a spectroscopic dataset of full spectral energy galaxy distributions, modelled after the upcoming Euclid satellite galaxy survey. Experimental analysis on observations of idealistic and realistic conditions demonstrate the potent capabilities of the proposed scheme.
机译:在本文中,我们解决了天文学的光谱红移估计问题。由于宇宙的扩展,星系平均互相偏离。由于多普勒效应,该运动导致发射的电磁波从光谱的蓝色部分转移到红色部分。 Redshift是天文学中最重要的可观察者之一,允许测量银河距离。若干噪声源使估计过程远离琐碎,特别是在许多天体物理观测的低信噪比中。近年来,已经找出了可靠和自动估算方法的新方法,以尽量减少我们对目前流行的涉及人为干预的流行技术的依赖。这项任务的实现已经发展成为一种严重的必要性,与巨大的天文数据的可贪得无际的产生。在我们的工作中,我们介绍了一种基于深度卷积神经网络的新方法。在即将到来的Euclid卫星银河系统调查之后,在全光谱能总星系分布的光谱数据集上广泛地评估所提出的方法。理想与现实条件观测的实验分析表明了拟议方案的有效能力。

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