A large-scale, physically-based synthetic dataset for satellite pose estimation
Journal:
arXiv
Published Date:
Jun 15, 2025
Abstract
The Deep Learning Visual Space Simulation System (DLVS3) introduces a novel
synthetic dataset generator and a simulation pipeline specifically designed for
training and testing satellite pose estimation solutions. This work introduces
the DLVS3-HST-V1 dataset, which focuses on the Hubble Space Telescope (HST) as
a complex, articulated target. The dataset is generated using advanced
real-time and offline rendering technologies, integrating high-fidelity 3D
models, dynamic lighting (including secondary sources like Earth reflection),
and physically accurate material properties. The pipeline supports the creation
of large-scale, richly annotated image sets with ground-truth 6-DoF pose and
keypoint data, semantic segmentation, depth, and normal maps. This enables the
training and benchmarking of deep learning-based pose estimation solutions
under realistic, diverse, and challenging visual conditions. The paper details
the dataset generation process, the simulation architecture, and the
integration with deep learning frameworks, and positions DLVS3 as a significant
step toward closing the domain gap for autonomous spacecraft operations in
proximity and servicing missions.