Open House Now — Property Listing
GHOST: Hierarchical Sub-Goal Policies for Generalizing Robot Manipulation
One-line summary
A robotics research paper on GHOST: Hierarchical Sub-Goal Policies for Generalizing Robot Manipulation.
Property details
Additional property details will be updated shortly.
Property description
We present GHOST, a framework for learning visuomotor manipulation policies that generalize beyond the training distribution. GHOST factorizes control into (i) a high-level policy that predicts the next sub-goal as a distribution over 3D end-effector poses from multi-view RGB-D observations, and (ii) a low-level goal-conditioned controller that executes embodiment-specific actions. To condition image-based policies on 3D goals, we introduce a simple spatial interface that projects predicted goals into the image plane and represents them as end-effector heatmaps. Across a suite of manipulation tasks, this hierarchical factorization consistently improves performance and robustness compared to a flat Diffusion Policy. Further, we show that this hierarchical interface also makes it easy to incorporate human demonstrations without relying on (noisy) action retargeting. As sub-goals are largely embodiment-agnostic, we train the high-level policy on human video to specify how learned skills should be applied and composed, while keeping the low-level policy trained purely on robot data. This hierarchy enables adaptation to novel objects and task variations using a small number of human demonstrations.
Links and sources
Interested in this property?
Open House Now can help you schedule a visit, connect with the listing agent, and find similar homes for sale in this neighborhood.
Contact us
Comments