Stellar classification from single-band imaging using machine learning
T. Kuntzer, M. Tewes, F. Courbin

TL;DR
This paper demonstrates that machine learning techniques can classify stellar spectral types accurately using only the shape of their diffraction patterns in single broad-band images, which is promising for large imaging surveys.
Contribution
It introduces a novel machine learning approach combining PCA and neural networks for stellar spectral classification from single-band images, including analysis under realistic survey conditions.
Findings
High classification accuracy with typical errors of half a spectral class.
Effective performance in both ideal and realistic survey scenarios.
Potential for stellar classification in large-scale imaging surveys.
Abstract
Information on the spectral types of stars is of great interest in view of the exploitation of space-based imaging surveys. In this article, we investigate the classification of stars into spectral types using only the shape of their diffraction pattern in a single broad-band image. We propose a supervised machine learning approach to this endeavour, based on principal component analysis (PCA) for dimensionality reduction, followed by artificial neural networks (ANNs) estimating the spectral type. Our analysis is performed with image simulations mimicking the Hubble Space Telescope (HST) Advanced Camera for Surveys (ACS) in the F606W and F814W bands, as well as the Euclid VIS imager. We first demonstrate this classification in a simple context, assuming perfect knowledge of the point spread function (PSF) model and the possibility of accurately generating mock training data for the…
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