Spectral unmixing for exoplanet direct detection in hyperspectral data
Julien Rameau, Jocelyn Chanussot, Alexis Carlotti, Mickael Bonnefoy,, and Philippe Delorme

TL;DR
This paper introduces a data-driven spectral unmixing method for exoplanet detection in hyperspectral data, offering a computationally efficient alternative to traditional cross-correlation techniques, with promising results on simulated and real data.
Contribution
The authors propose a novel spectral unmixing approach for exoplanet detection that reduces computational cost and mitigates model mismatch issues compared to existing cross-correlation methods.
Findings
Spectral unmixing detects exoplanets effectively based on spectral dissimilarities.
The method is significantly faster than cross-correlation, with reduced computational cost.
On real data, the approach successfully identified signatures of the exoplanet.
Abstract
The direct detection of exoplanets with high-contrast instruments can be boosted with high spectral resolution. For integral field spectrographs yielding hyperspectral data, this means that the field of view consists of diffracted starlight spectra and a spatially localized planet. Analysis usually relies on cross-correlation with theoretical spectra. In a purely blind-search context, this supervised strategy can be biased with model mismatch and/or be computationally inefficient. Using an approach that is inspired by the remote-sensing community, we aim to propose an alternative to cross-correlation that is fully data-driven, which decomposes the data into a set of individual spectra and their corresponding spatial distributions. This strategy is called spectral unmixing. We used an orthogonal subspace projection to identify the most distinct spectra in the field of view. Their spatial…
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