Abstract
This study developed a real-time spacecraft pose estimation algorithm that
combined a deep learning model and the least-squares method. Pose estimation in
space is crucial for automatic rendezvous docking and inter-spacecraft
communication. Owing to the difficulty in training deep learning models in
space, we showed that actual experimental results could be predicted through
software simulations on the ground. We integrated deep learning with nonlinear
least squares (NLS) to predict the pose from a single spacecraft image in real
time. We constructed a virtual environment capable of mass-producing synthetic
images to train a deep learning model. This study proposed a method for training
a deep learning model using pure synthetic images. Further, a visual-based
real-time estimation system suitable for use in a flight testbed was
constructed. Consequently, it was verified that the hardware experimental
results could be predicted from software simulations with the same environment
and relative distance. This study showed that a deep learning model trained
using only synthetic images can be sufficiently applied to real images. Thus,
this study proposed a real-time pose estimation software for automatic docking
and demonstrated that the method constructed with only synthetic data was
applicable in space.
Funder
Agency for Defense Development
Publisher
The Korean Space Science Society