Using Independent Component Analysis to detect exoplanet reflection spectrum from composite spectra of exoplanetary binary systems
Paolo Di Marcantonio, Carlo Morossi, Mariagrazia Franchini, Holger, Lehmann

TL;DR
This paper introduces an Independent Component Analysis method to detect exoplanet reflection spectra from composite star-planet data, offering a blind and potentially more effective alternative to existing techniques, demonstrated through simulations and real data.
Contribution
The paper presents a novel ICA-based approach for extracting exoplanet reflected spectra without prior knowledge, improving detection capabilities over traditional methods.
Findings
Successfully applied to simulated data
Extracted signals from real binary star data
Limited detection of 51 Peg b due to low SNR
Abstract
The analysis of the wavelength-dependent albedo of exoplanets represents a direct way to provide insight of their atmospheric composition and to constrain theoretical planetary atmosphere modelling. Wavelength-dependent albedo can be inferred from the exoplanet's reflected light of the host star, but this is not a trivial task. In fact, the planetary signal may be several orders of magnitude lower ( or below) than the flux of the host star, thus making its extraction very challenging. Successful detection of the planetary signature of 51~Peg\,b has been recently obtained by using cross-correlation function (CCF) or autocorrelation function (ACF) techniques. In this paper we present an alternative method based on the use of Independent Component Analysis (ICA). In comparison to the above-mentioned techniques, the main advantages of ICA are that the extraction is \textit{"blind"}…
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