Missions to small celestial bodies rely heavily on optical feature tracking for characterization of and relative navigation around the target body. While deep learning has led to great advancements in feature detection and description, training and validating data-driven models for space applications is challenging due to the limited availability of large-scale, annotated datasets. This paper introduces AstroVision, a large-scale dataset comprised of 115,970 densely annotated, real images of 16 different small bodies captured during past and ongoing missions. We leverage AstroVision to develop a set of standardized benchmarks and conduct an exhaustive evaluation of both handcrafted and data-driven feature detection and description methods. Next, we employ AstroVision for end-to-end training of a state-of-the-art, deep feature detection and description network and demonstrate improved performance on multiple benchmarks. The full benchmarking pipeline and the dataset will be made publicly available to facilitate the advancement of computer vision algorithms for space applications.
翻译:前往小型天体的飞行任务严重依赖光学特征跟踪,以了解目标物体的特征和相对导航情况。虽然深层学习导致地物探测和描述、培训和验证空间应用数据驱动模型取得了巨大进展,但由于大规模附加说明的数据集有限,因此具有挑战性。本文介绍由115,970个高密度附加说明的大型数据集AstroVision,这是过去和正在进行的飞行任务中捕获的16个不同小天体的真实图像。我们利用天体观测开发一套标准化基准,并对手制和数据驱动的地物探测和描述方法进行详尽评价。接下来,我们利用天体观察对最新、深层地物探测和描述网络进行端到端培训,并展示在多个基准方面的改进性能。将公布完整的基准管道和数据集,以促进空间应用计算机愿景算法的进步。