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A Monocular Pose Estimation Case Study: The Hayabusa2 Minerva-II2 Deployment

机译:单眼姿势估计案例研究:Hayabusa2 Minerva-II2部署

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In an environment of increasing orbital debris and remote operation, visual data acquisition methods are becoming a core competency of the next generation of spacecraft. However, deep space missions often generate limited data and noisy images, necessitating complex data analysis methods. Here, a state-of-the-art convolutional neural network (CNN) pose estimation pipeline is applied to the Hayabusa2 Minerva-II2 rover deployment; a challenging case with noisy images and a symmetric target. To enable training of this CNN, a custom dataset is created. The deployment velocity is estimated as 0.1908 m/s using a projective geometry approach and 0.1934 m/s using a CNN landmark detector approach, as compared to the official JAXA estimation of 0.1924 m/s (relative to the spacecraft). Additionally, the attitude estimation results from the real deployment images are shared and the associated tumble estimation is discussed.
机译:在增加轨道碎片和远程操作的环境中,视觉数据采集方法正在成为下一代航天器的核心竞争力。 但是,深度空间任务经常产生有限的数据和嘈杂的图像,需要复杂的数据分析方法。 这里,将最先进的卷积神经网络(CNN)姿态估计管道应用于Hayabusa2 Minerva-II2流动站部署; 具有嘈杂图像和对称目标的具有挑战性的案例。 要启用此CNN的培训,请创建自定义数据集。 使用CNN地标检测器方法估计部署速度估计为0.1908米/秒,与0.1934米/秒相比,与0.1924 m / s的官方JAXA估计相比(相对于航天器)相比。 另外,共享来自真实部署图像的姿态估计结果并讨论相关的翻滚估计。

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