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GENMANIP: LLM-driven Simulation for Generalizable Instruction-Following Manipulation

GENMANIP: LLM-driven Simulation for Generalizable Instruction-Following Manipulation

来源:Arxiv_logoArxiv
英文摘要

Robotic manipulation in real-world settings remains challenging, especially regarding robust generalization. Existing simulation platforms lack sufficient support for exploring how policies adapt to varied instructions and scenarios. Thus, they lag behind the growing interest in instruction-following foundation models like LLMs, whose adaptability is crucial yet remains underexplored in fair comparisons. To bridge this gap, we introduce GenManip, a realistic tabletop simulation platform tailored for policy generalization studies. It features an automatic pipeline via LLM-driven task-oriented scene graph to synthesize large-scale, diverse tasks using 10K annotated 3D object assets. To systematically assess generalization, we present GenManip-Bench, a benchmark of 200 scenarios refined via human-in-the-loop corrections. We evaluate two policy types: (1) modular manipulation systems integrating foundation models for perception, reasoning, and planning, and (2) end-to-end policies trained through scalable data collection. Results show that while data scaling benefits end-to-end methods, modular systems enhanced with foundation models generalize more effectively across diverse scenarios. We anticipate this platform to facilitate critical insights for advancing policy generalization in realistic conditions. Project Page: https://genmanip.axi404.top/.

Ning Gao、Yilun Chen、Shuai Yang、Xinyi Chen、Yang Tian、Hao Li、Haifeng Huang、Hanqing Wang、Tai Wang、Jiangmiao Pang

计算技术、计算机技术

Ning Gao,Yilun Chen,Shuai Yang,Xinyi Chen,Yang Tian,Hao Li,Haifeng Huang,Hanqing Wang,Tai Wang,Jiangmiao Pang.GENMANIP: LLM-driven Simulation for Generalizable Instruction-Following Manipulation[EB/OL].(2025-06-12)[2025-06-21].https://arxiv.org/abs/2506.10966.点此复制

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