English

Event-Driven Proactive Assistive Manipulation with Grounded Vision-Language Planning

Robotics 2026-03-26 v1

Abstract

Assistance in collaborative manipulation is often initiated by user instructions, making high-level reasoning request-driven. In fluent human teamwork, however, partners often infer the next helpful step from the observed outcome of an action rather than waiting for instructions. Motivated by this, we introduce a shift from request-driven assistance to event-driven proactive assistance, where robot actions are initiated by workspace state transitions induced by human--object interactions rather than user-provided task instructions. To this end, we propose an event-driven framework that tracks interaction progress with an event monitor and, upon event completion, extracts stabilized pre/post snapshots that characterize the resulting state transition. Given the stabilized snapshots, the planner analyzes the implied state transition to infer a task-level goal and decide whether to intervene; if so, it generates a sequence of assistive actions. To make outputs executable and verifiable, we restrict actions to a set of action primitives and reference objects via integer IDs. We evaluate the framework on a real tabletop number-block collaboration task, demonstrating that explicit pre/post state-change evidence improves proactive completion on solvable scenes and appropriate waiting on unsolvable ones.

Keywords

Cite

@article{arxiv.2603.23950,
  title  = {Event-Driven Proactive Assistive Manipulation with Grounded Vision-Language Planning},
  author = {Fengkai Liu and Hao Su and Haozhuang Chi and Rui Geng and Congzhi Ren and Xuqing Liu and Yucheng Xu and Yuichi Ohsita and Liyun Zhang},
  journal= {arXiv preprint arXiv:2603.23950},
  year   = {2026}
}
R2 v1 2026-07-01T11:36:45.463Z