Back to Search Start Over

Lightweight starshade position sensing with convolutional neural networks and simulation-based inference

Authors :
Chen, Andrew
Harness, Anthony
Melchior, Peter
Publication Year :
2022

Abstract

Starshades are a leading technology to enable the direct detection and spectroscopic characterization of Earth-like exoplanets. To keep the starshade and telescope aligned over large separations, reliable sensing of the peak of the diffracted light of the occluded star is required. Current techniques rely on image matching or model fitting, both of which put substantial computational burdens on resource-limited spacecraft computers. We present a lightweight image processing method based on a convolutional neural network paired with a simulation-based inference technique to estimate the position of the spot of Arago and its uncertainty. The method achieves an accuracy of a few centimeters across the entire pupil plane, while only requiring 1.6 MB in stored data structures and 5.3 MFLOPs (million floating point operations) per image at test time. By deploying our method at the Princeton Starshade Testbed, we demonstrate that the neural network can be trained on simulated images and used on real images, and that it can successfully be integrated in the control system for closed-loop formation flying.<br />Comment: submitted to JATIS

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2204.03853
Document Type :
Working Paper
Full Text :
https://doi.org/10.1117/1.JATIS.9.2.025002