LGMCTS: Language-Guided Monte-Carlo Tree Search for Executable Semantic Object Rearrangement
Chang, Haonan, Gao, Kai, Boyalakuntla, Kowndinya, Lee, Alex, Huang, Baichuan, Kumar, Harish Udhaya, Yu, Jinjin, Boularias, Abdeslam
–arXiv.org Artificial Intelligence
We introduce a novel approach to the executable semantic object rearrangement problem. In this challenge, a robot seeks to create an actionable plan that rearranges objects within a scene according to a pattern dictated by a natural language description. Unlike existing methods such as StructFormer and StructDiffusion, which tackle the issue in two steps by first generating poses and then leveraging a task planner for action plan formulation, our method concurrently addresses pose generation and action planning. We achieve this integration using a Language-Guided Monte-Carlo Tree Search (LGMCTS). Quantitative evaluations are provided on two simulation datasets, and complemented by qualitative tests with a real robot.
arXiv.org Artificial Intelligence
Sep-27-2023