Autonomous spacecraft relative navigation technology has been planned for and applied to many famous space missions. The development of on-board electronics systems has enabled the use of vision-based and LiDAR-based methods to achieve better performances. Meanwhile, deep learning has reached great success in different areas, especially in computer vision, which has also attracted the attention of space researchers. However, spacecraft navigation differs from ground tasks due to high reliability requirements but lack of large datasets. This survey aims to systematically investigate the current deep learning-based autonomous spacecraft relative navigation methods, focusing on concrete orbital applications such as spacecraft rendezvous and landing on small bodies or the Moon. The fundamental characteristics, primary motivations, and contributions of deep learning-based relative navigation algorithms are first summarised from three perspectives of spacecraft rendezvous, asteroid exploration, and terrain navigation. Furthermore, popular visual tracking benchmarks and their respective properties are compared and summarised. Finally, potential applications are discussed, along with expected impediments.
翻译:已经为许多著名的空间飞行任务规划并应用了自主航天器相对导航技术,开发了机载电子系统,从而得以使用基于视像和LiDAR的测距方法取得更好的性能,同时,在不同领域,特别是在计算机的测距方面,深层学习取得了巨大成功,这也引起了空间研究人员的注意,然而,由于可靠性要求高,但缺乏大量数据集,航天器导航与地面任务不同,这次调查的目的是系统调查目前深层学习的自主航天器相对导航方法,重点是具体轨道应用,例如航天器会合和降落在小身体或月球上,首先从航天器会合、小行星探索和地形航行这三个角度对深层学习相对导航算法的基本特征、主要动机和贡献进行了总结,此外,对大众视觉跟踪基准及其各自的特性进行了比较和归纳,最后,讨论了潜在的应用,以及预期的障碍。