OASIS: Observation-Action Space Alignment via SE(3) Trajectory Prediction for Robotic Manipulation 文章

ArXiv CS.AI2026-05-26NEWSen作者: Xinzhe Chen, Sihua Ren, Liqi Huang, Haowen Sun, Mingyang Li, Xingyu Chen, Zeyang Liu, Xuguang Lan

摘要

arXiv:2605.25829v1 Announce Type: cross Abstract: Recent vision-language-action (VLA) models and world action models (WAMs) advance robotic manipulation by enriching intermediate representations with auxiliary spatial features or future visual-state prediction. However, these representations largely remain within the observation space and do not share the rigid-body geometry of the action space, forcing the action decoder to implicitly recover this geometry. We propose OASIS, a visuomotor policy that aligns the intermediate representation with the action space via $SE(3)$ end-effector trajectory prediction. OASIS couples a 3D-aware feature encoder that fuses vision-language and metric-depth features with an $SE(3)$ trajectory predictor that produces a camera-frame end-effector trajectory. Conditioned on the predictor's pose-supervised hidden states, the action decoder generates action chunks consistent with rigid-body motion.