中文

HUMEMBR: Learning Human Routines for Predictive Embodied Navigation

机器人学 2026-06-29 v1

摘要

Understanding and navigating human-centered environments over extended periods of time while considering human behavior and routines remains a fundamental challenge in robotics. In real-world settings, robots may be asked to locate a specific individual, predict where that person is likely to be, or estimate when they typically leave a building. Addressing such queries requires reasoning over extensive histories of observations and capturing long-term behavioral patterns. To this end, we introduce Human-Centered Memory for Embodied Robots (HUMEMBR), a system designed for embodied question answering and routine-conditioned navigation. HUMEMBR integrates a continuous memory construction process with a parallel retrieval and querying mechanism, enabling the system to accumulate structured representations of human routines while supporting interactive, user-driven queries. Our experimental results indicate that HUMEMBR improves long-horizon reasoning about human behavior relative to full-context LLM baselines, while using substantially fewer tokens. Furthermore, we deploy HUMEMBR on a physical robot in two distinct environments, showing its ability to handle diverse queries and navigation tasks under real-world conditions.

引用

@article{arxiv.2606.30404,
  title  = {HUMEMBR: Learning Human Routines for Predictive Embodied Navigation},
  author = {Samira Huber and Klaas Pelzer and Duc M. Nguyen and Xuesu Xiao and Sören Pirk},
  journal= {arXiv preprint arXiv:2606.30404},
  year   = {2026}
}

备注

Accepted to IROS 2026