Real-Time Convolutional Neural Network-Based Star Detection and Centroiding Method for CubeSat Star Tracker
Hongrui Zhao, Michael F. Lembeck, Adrian Zhuang, Riya Shah, Jesse Wei

TL;DR
This paper presents a CNN-based star detection and centroiding method for CubeSat star trackers that improves accuracy and noise resilience, capable of real-time operation on low-power processors.
Contribution
Introduces a CNN approach using UNet variants for robust, real-time star detection and centroiding in noisy, stray-light contaminated images, outperforming traditional algorithms.
Findings
Outperforms existing algorithms in centroiding accuracy
Demonstrates robustness against sensor noise and stray light
Operates in real-time on low-power edge AI processors
Abstract
Star trackers are one of the most accurate celestial sensors used for absolute attitude determination. The devices detect stars in captured images and accurately compute their projected centroids on an imaging focal plane with subpixel precision. Traditional algorithms for star detection and centroiding often rely on threshold adjustments for star pixel detection and pixel brightness weighting for centroid computation. However, challenges like high sensor noise and stray light can compromise algorithm performance. This article introduces a Convolutional Neural Network (CNN)-based approach for star detection and centroiding, tailored to address the issues posed by noisy star tracker images in the presence of stray light and other artifacts. Trained using simulated star images overlayed with real sensor noise and stray light, the CNN produces both a binary segmentation map distinguishing…
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Taxonomy
TopicsInertial Sensor and Navigation · Astronomical Observations and Instrumentation · Space Satellite Systems and Control
MethodsSparse Evolutionary Training
