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AdaptPNP: Integrating Prehensile and Non-Prehensile Skills for Adaptive Robotic Manipulation

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Non-prehensile (NP) manipulation, in which robots alter object states without forming stable grasps (for example, pushing, poking, or sliding), significantly broadens robotic manipulation capabilities when grasping is infeasible or insufficient. However, enabling a unified framework that generalizes across different tasks, objects, and environments while seamlessly integrating non-prehensile and prehensile (P) actions remains challenging: robots must determine when to invoke NP skills, select the appropriate primitive for each context, and compose P and NP strategies into robust, multi-step plans. We introduce ApaptPNP, a vision-language model (VLM)-empowered task and motion planning framework that systematically selects and combines P and NP skills to accomplish diverse manipulation objectives. Our approach leverages a VLM to interpret visual scene observations and textual task descriptions, generating a high-level plan skeleton that prescribes the sequence and coordination of P and NP actions. A digital-twin based object-centric intermediate layer predicts desired object poses, enabling proactive mental rehearsal of manipulation sequences. Finally, a control module synthesizes low-level robot commands, with continuous execution feedback enabling online task plan refinement and adaptive replanning through the VLM. We evaluate ApaptPNP across representative P&NP hybrid manipulation tasks in both simulation and real-world environments. These results underscore the potential of hybrid P&NP manipulation as a crucial step toward general-purpose, human-level robotic manipulation capabilities. Project Website: https://adaptpnp.github.io/

Jinxuan Zhu, Chenrui Tie, Xinyi Cao, Yuran Wang, Jingxiang Guo, Zixuan Chen, Haonan Chen, Junting Chen, Yangyu Xiao, Ruihai Wu, Lin Shao• 2025

Related benchmarks

TaskDatasetResultRank
Book AlignmentIsaacSim
Success Rate7
6
Edge Extrinsic DexterityIsaacSim
Success Rate60
6
Slope Extrinsic DexterityIsaacSim
Success Rate50
6
Slot Extrinsic DexterityIsaacSim
Success Rate9
6
Tool Hook Tool UsingIsaacSim
Success Rate6
6
Tool Pusher Tool UsingIsaacSim
Success Rate3
6
Wall Extrinsic DexterityIsaacSim
Success Rate80
6
Box AlignmentIsaacSim
Success Rate90
6
Box ManipulationReal-world
Success Rate8
3
Edge ManipulationReal-world
Success Rate40
3
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