${\tt PlanetEvidence}$: Planet or Noise?
Jacob Golomb (1), Gra\c{c}a Rocha (2,3), Tiffany Meshkat (4), Michael, Bottom (2), Dimitri Mawet (3), Bertrand Mennesson (2), Gautam Vasisht (2),, and Jason Wang (3,5) ((1) University of Maryland, MD, (2) Jet Propulsion, Laboratory, Pasadena

TL;DR
The paper introduces PlanetEvidence, a Bayesian framework combining source detection and characterization to improve exoplanet detection in direct imaging data, quantifying confidence and enhancing faint signal detectability.
Contribution
It presents a novel Bayesian method integrating nested sampling and KLIP for robust planet detection and characterization, including a proof-of-concept implementation and real data testing.
Findings
Successfully detects known planets in real data
Identifies faint sources below traditional detection thresholds
Quantifies confidence levels for planet detections
Abstract
The work presented here attempts at answering the question: how do we decide when a given adetection is a planet or just residual noise in exoplanet direct imaging data? To this end we present a method implemented within a Bayesian framework: (1) to unify 'source detection', and, 'source characterization' into one single rigorous mathematical framework; (2) to enable an adequate hypothesis testing given the S/N of the data; (3) to enhance the detectability of planets faint signal in the presence of instrumental and background noise and to optimize the characterization of the planet. As a proof of concept we implemented a routine named that integrates the nested sampling technique (Multinest) with a post-processing technique, the Karhunen-Loeve Image Processing (KLIP), algorithm. This is a first step to recast such post-processing method into a fully Bayesian…
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Taxonomy
TopicsBlind Source Separation Techniques · Stellar, planetary, and galactic studies · Geochemistry and Geologic Mapping
