Published January 3, 2025 | Version Published
Journal Article Open

Exoplanet Imaging via Differentiable Rendering

  • 1. ROR icon Massachusetts Institute of Technology
  • 2. ROR icon Northwestern University
  • 3. ROR icon University of Toronto
  • 4. ROR icon California Institute of Technology

Abstract

Direct imaging of exoplanets is crucial for advancing our understanding of planetary systems beyond our solar system, but it faces significant challenges due to the high contrast between host stars and their planets. Wavefront aberrations introduce speckles in the telescope science images, which are patterns of diffracted starlight that can mimic the appearance of planets, complicating the detection of faint exoplanet signals. Traditional post-processing methods, operating primarily in the image intensity domain, do not integrate wavefront sensing data. These data, measured mainly for adaptive optics corrections, have been overlooked as a potential resource for post-processing, partly due to the challenge of the evolving nature of wavefront aberrations. In this paper, we present a differentiable rendering approach that leverages these wavefront sensing data to improve exoplanet detection. Our differentiable renderer models wave-based light propagation through a coronagraphic telescope system, allowing gradient-based optimization to significantly improve starlight subtraction and increase sensitivity to faint exoplanets. Simulation experiments based on the James Webb Space Telescope configuration demonstrate the effectiveness of our approach, achieving substantial improvements in contrast and planet detection limits. Our results showcase how the computational advancements enabled by differentiable rendering can revitalize previously underexploited wavefront data, opening new avenues for enhancing exoplanet imaging and characterization.

Copyright and License

© 2025 The Authors. This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see https://creativecommons.org/licenses/by/4.0/.

Funding

This work was supported in part by NSF under Award 2019786, in part by the NSF AI Institute for Artificial Intelligence and Fundamental Interactions, in part by CIF under Award 1955864, and in part by the Occlusion and Directional Resolution in Computational Imaging. The work of Aviad Levis was supported in part by the NSERC-Discovery Grant. The work of Jason J. Wang and Rodrigo Ferrer-Chávez was supported by STScI under Grant JWST-ERS-01386 and Grant JWST-GO-04050, in part by NASA under Grant NAS5-03127. The work of Katherine L. Bouman was supported in part by the NSF CAREER under Award 2048237, and in part by the Amazon AI4Science Partnership
Discovery Grant, and the Carver Mead New Adventures Fund.

Additional Information

The associate editor coordinating the review of this article and approving it for publication was Prof. Mohit Gupta. (Corresponding author: Brandon Y. Feng.)

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Additional details

Related works

Is new version of
Discussion Paper: arXiv:2501.01912 (arXiv)

Funding

National Science Foundation
PHY-2019786
National Science Foundation
AI Institute for Artificial Intelligence and Fundamental Interactions
National Science Foundation
CCF-1955864
Natural Sciences and Engineering Research Council
Space Telescope Science Institute
JWST-ERS-01386
Space Telescope Science Institute
JWST-GO-04050
National Aeronautics and Space Administration
NAS5-03127
National Science Foundation
CCF-2048237
Amazon (United States)
AI4Science Partnership Discovery Grant
California Institute of Technology
Carver Mead New Adventures Fund

Dates

Accepted
2024-12-25
Accepted
Available
2025-01-15
Date of current version

Caltech Custom Metadata

Caltech groups
Astronomy Department
Publication Status
Published