ActivePusher: Active Learning and Planning with Residual Physics for Nonprehensile Manipulation
ActivePusher: Active Learning and Planning with Residual Physics for Nonprehensile Manipulation
Planning with learned dynamics models offers a promising approach toward real-world, long-horizon manipulation, particularly in nonprehensile settings such as pushing or rolling, where accurate analytical models are difficult to obtain. Although learning-based methods hold promise, collecting training data can be costly and inefficient, as it often relies on randomly sampled interactions that are not necessarily the most informative. To address this challenge, we propose ActivePusher, a novel framework that combines residual-physics modeling with kernel-based uncertainty-driven 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 improves data efficiency and planning success rates compared to baseline methods.
Zhuoyun Zhong、Seyedali Golestaneh、Constantinos Chamzas
计算技术、计算机技术
Zhuoyun Zhong,Seyedali Golestaneh,Constantinos Chamzas.ActivePusher: Active Learning and Planning with Residual Physics for Nonprehensile Manipulation[EB/OL].(2025-06-05)[2025-06-08].https://arxiv.org/abs/2506.04646.点此复制
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