Real-Time Convolutional-Neural-Network-Based Star Detection and Centroiding Method for CubeSat Star Tracker

IF 5.7 2区 计算机科学 Q1 ENGINEERING, AEROSPACE IEEE Transactions on Aerospace and Electronic Systems Pub Date : 2025-02-25 DOI:10.1109/TAES.2025.3542744
Hongrui Zhao;Michael F. Lembeck;Adrian Zhuang;Riya Shah;Jesse Wei
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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 such as 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 star pixels from the background and a distance map indicating each pixel's proximity to the nearest star centroid. Leveraging this distance information alongside pixel coordinates transforms centroid calculations into a set of trilateration problems solvable via the least-squares method. Our method employs efficient UNet variants for the underlying CNN architectures, and the variants' performances are evaluated. Comprehensive testing has been undertaken with synthetic image evaluations, hardware-in-the-loop assessments, and night sky tests. The tests consistently demonstrated that our method outperforms several existing algorithms in centroiding accuracy and exhibits superior resilience to high sensor noise and stray light interference. An additional benefit of our algorithms is that they can be executed in real-time on low-power edge artificial intelligence processors.
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基于实时卷积神经网络的立方体星跟踪器星检测和质心方法
星跟踪器是用于确定绝对姿态的最精确的天体传感器之一。该设备在捕获的图像中检测恒星,并在成像焦平面上以亚像素精度精确计算它们的投影质心。传统的恒星检测和质心化算法往往依赖于阈值调整来进行恒星像素检测,依赖于像素亮度加权来进行质心计算。然而,高传感器噪声和杂散光等挑战会影响算法的性能。本文介绍了一种基于卷积神经网络(CNN)的恒星探测和质心定位方法,该方法是为解决杂散光和其他伪影存在下的噪声星跟踪器图像所带来的问题而定制的。CNN使用叠加了真实传感器噪声和杂散光的模拟星图进行训练,生成了将恒星像素与背景区分开来的二值分割图,以及表示每个像素与最近恒星质心接近程度的距离图。利用这些距离信息和像素坐标将质心计算转换为一组可通过最小二乘法解决的三边测量问题。我们的方法为底层的CNN架构采用了高效的UNet变体,并对变体的性能进行了评估。已经进行了综合测试,包括合成图像评估、硬件在环评估和夜空测试。测试一致表明,我们的方法在质心精度方面优于几种现有算法,并且对高传感器噪声和杂散光干扰具有卓越的恢复能力。我们的算法的另一个好处是,它们可以在低功耗的边缘人工智能处理器上实时执行。
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来源期刊
CiteScore
7.80
自引率
13.60%
发文量
433
审稿时长
8.7 months
期刊介绍: IEEE Transactions on Aerospace and Electronic Systems focuses on the organization, design, development, integration, and operation of complex systems for space, air, ocean, or ground environment. These systems include, but are not limited to, navigation, avionics, spacecraft, aerospace power, radar, sonar, telemetry, defense, transportation, automated testing, and command and control.
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