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Compose by Focus: Scene Graph-based Atomic Skills

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A key requirement for generalist robots is compositional generalization - the ability to combine atomic skills to solve complex, long-horizon tasks. While prior work has primarily focused on synthesizing a planner that sequences pre-learned skills, robust execution of the individual skills themselves remains challenging, as visuomotor policies often fail under distribution shifts induced by scene composition. To address this, we introduce a scene graph-based representation that focuses on task-relevant objects and relations, thereby mitigating sensitivity to irrelevant variation. Building on this idea, we develop a scene-graph skill learning framework that integrates graph neural networks with diffusion-based imitation learning, and further combine "focused" scene-graph skills with a vision-language model (VLM) based task planner. Experiments in both simulation and real-world manipulation tasks demonstrate substantially higher success rates than state-of-the-art baselines, highlighting improved robustness and compositional generalization in long-horizon tasks.

Han Qi, Changhe Chen, Heng Yang• 2025

Related benchmarks

TaskDatasetResultRank
Tool UsageReal-world tool usage
Success Rate90
13
Skill Composition Vegetable PickingReal-world Vegetable Picking 1.0 (Evaluation)
Success Rate97
4
Single Skill Vegetable Picking (with distractors)Real-world Vegetable Picking 1.0 (Evaluation)
Success Rate100
4
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