KiTe augments sampling-based kinodynamic planning with terminal costs in belief space, proving asymptotic optimality preservation and improved goal-reaching probability bounds via Wasserstein minimization, supported by learned uncertainty models and experiments.
ActivePusher: Active Learning and Planning with Residual Physics for Nonprehensile Manipulation
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
Planning with learned dynamics models offers a promising approach toward versatile real-world manipulation, particularly in nonprehensile settings such as pushing or rolling, where accurate analytical models are difficult to obtain. However, collecting training data for learning-based methods can be costly and inefficient, as it often relies on randomly sampled interactions that are not necessarily the most informative. Furthermore, learned models tend to exhibit high uncertainty in underexplored regions of the skill space, undermining the reliability of long-horizon planning. To address these challenges, we propose ActivePusher, a novel framework that combines residual-physics modeling with uncertainty-based active learning, to focus data acquisition on the most informative skill parameters. Additionally, ActivePusher seamlessly integrates with model-based kinodynamic planners, leveraging uncertainty estimates to bias control sampling toward more reliable actions. We evaluate our approach in both simulation and real-world environments, and demonstrate that it consistently improves data efficiency and achieves higher planning success rates in comparison to baseline methods. The source code is available at https://github.com/elpis-lab/ActivePusher.
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cs.RO 2years
2026 2verdicts
UNVERDICTED 2roles
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background 1representative citing papers
A graspability field learned from synthesized grasps provides a dense reward signal for an RL policy that performs closed-loop non-prehensile manipulation leading to successful grasps.
citing papers explorer
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Terminal Matters: Kinodynamic Planning with a Terminal Cost and Learned Uncertainty in Belief State-Cost Space
KiTe augments sampling-based kinodynamic planning with terminal costs in belief space, proving asymptotic optimality preservation and improved goal-reaching probability bounds via Wasserstein minimization, supported by learned uncertainty models and experiments.
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Grasp-Oriented Non-Prehensile Manipulation via Learning a Graspability Field
A graspability field learned from synthesized grasps provides a dense reward signal for an RL policy that performs closed-loop non-prehensile manipulation leading to successful grasps.