SAFAG introduces a symmetry annotation-free two-stage learning strategy for generalizable actionable parts pose estimation in robotics.
Proceedings of the 32nd ACM International Conference on Multimedia , pages=
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Generalizable and Actionable Parts Pose Estimation with Symmetry Annotation-Free Learning Strategy
SAFAG introduces a symmetry annotation-free two-stage learning strategy for generalizable actionable parts pose estimation in robotics.