Klaus Okkelberg, The Boeing Company; Jacob Lucas, The Boeing Company; Trent Kyono, The Boeing Company; Michael Abercrombie, The Boeing Company; Justin Fletcher, Odyssey Systems Consulting; Matthew Phelps, Odyssey Systems Consulting
Keywords: deep learning, pose estimation
Abstract:
Understanding the orientation or pose of a satellite is critical for space domain awareness. Recent advancements in pose estimation using convolutional neural networks (CNNs) have motivated us to examine a data-driven, end-to-end solution for estimating satellite pose. In this work, we use a CNN to directly estimate the pointing angle of a resolved LEO object. To improve the generalization of this task to varying objects, we perform classification as an auxiliary task for regularization. Both supervised and self-supervised auxiliary learning methods are explored. We show on a large synthetic dataset that multi-task self-supervision can improve the primary task of pointing angle estimation and improves generalization to held-out objects.
Date of Conference: September 14-17, 2021
Track: Machine Learning for SSA Applications