cs.AI updates on arXiv.org 10月13日
LLM辅助接触点选择策略提升协作搬运效率
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本文提出一种结合大型语言模型(LLM)与局部搜索的接触点选择方法,用于解决复杂环境中多机器人协作搬运问题,有效提升了搬运效率。

arXiv:2510.08705v1 Announce Type: cross Abstract: Object transportation in cluttered environments is a fundamental task in various domains, including domestic service and warehouse logistics. In cooperative object transport, multiple robots must coordinate to move objects that are too large for a single robot. One transport strategy is pushing, which only requires simple robots. However, careful selection of robot-object contact points is necessary to push the object along a preplanned path. Although this selection can be solved analytically, the solution space grows combinatorially with the number of robots and object size, limiting scalability. Inspired by how humans rely on common-sense reasoning for cooperative transport, we propose combining the reasoning capabilities of Large Language Models with local search to select suitable contact points. Our LLM-guided local search method for contact point selection, ConPoSe, successfully selects contact points for a variety of shapes, including cuboids, cylinders, and T-shapes. We demonstrate that ConPoSe scales better with the number of robots and object size than the analytical approach, and also outperforms pure LLM-based selection.

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协作搬运 接触点选择 大型语言模型 局部搜索
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