首页 /研究 /Guiding Long-Horizon Task and Motion Planning with Vision Language Models
OTHER

Guiding Long-Horizon Task and Motion Planning with Vision Language Models

Zhutian Yang, Caelan Reed Garrett, Dieter Fox, Tomás Lozano‐Pérez, Leslie Pack Kaelbling

发表年份
2025
引用次数
16

摘要

Vision-Language Models (VLM) can generate plausible high-level plans when prompted with a goal, the context, an image of the scene, and any planning constraints. However, there is no guarantee that the predicted actions are geometrically and kinematically feasible for a particular robot embodiment. As a result, many prerequisite steps such as opening drawers to access objects are often omitted in their plans. Robot task and motion planners can generate motion trajectories that respect the geometric feasibility of actions and insert physically necessary actions, but do not scale to everyday problems that require common-sense knowledge and involve large state spaces comprised of many variables. We propose VLM-TAMP, a hierarchical planning algorithm that leverages a VLM to generate both semantically-meaningful and horizon-reducing intermediate subgoals that guide a task and motion planner. When a subgoal or action cannot be refined, the VLM is queried again for replanning. We evaluate VLMTAMP on kitchen tasks where a robot must accomplish cooking goals that require performing 30-50 actions in sequence and interacting with up to 21 objects. VLM-TAMP substantially outperforms baselines that rigidly and independently execute VLM-generated action sequences, both in terms of success rates (50 to 100 % versus 0 %) and average task completion percentage (72 to 100 % versus 15 to 45 %). See project site https://zt-yang.github.io/vlm-tamp-robot/ for more information.

关键词

Computer scienceHorizonTask (project management)Motion (physics)Motion planningArtificial intelligenceComputer visionHuman–computer interactionSystems engineeringEngineering

相关论文

查看 OTHER 分类全部论文