English

Arcadia: Toward a Full-Lifecycle Framework for Embodied Lifelong Learning

Robotics 2025-12-02 v1 Computer Vision and Pattern Recognition

Abstract

We contend that embodied learning is fundamentally a lifecycle problem rather than a single-stage optimization. Systems that optimize only one link (data collection, simulation, learning, or deployment) rarely sustain improvement or generalize beyond narrow settings. We introduce Arcadia, a closed-loop framework that operationalizes embodied lifelong learning by tightly coupling four stages: (1) Self-evolving exploration and grounding for autonomous data acquisition in physical environments, (2) Generative scene reconstruction and augmentation for realistic and extensible scene creation, (3) a Shared embodied representation architecture that unifies navigation and manipulation within a single multimodal backbone, and (4) Sim-from-real evaluation and evolution that closes the feedback loop through simulation-based adaptation. This coupling is non-decomposable: removing any stage breaks the improvement loop and reverts to one-shot training. Arcadia delivers consistent gains on navigation and manipulation benchmarks and transfers robustly to physical robots, indicating that a tightly coupled lifecycle: continuous real-world data acquisition, generative simulation update, and shared-representation learning, supports lifelong improvement and end-to-end generalization. We release standardized interfaces enabling reproducible evaluation and cross-model comparison in reusable environments, positioning Arcadia as a scalable foundation for general-purpose embodied agents.

Keywords

Cite

@article{arxiv.2512.00076,
  title  = {Arcadia: Toward a Full-Lifecycle Framework for Embodied Lifelong Learning},
  author = {Minghe Gao and Juncheng Li and Yuze Lin and Xuqi Liu and Jiaming Ji and Xiaoran Pan and Zihan Xu and Xian Li and Mingjie Li and Wei Ji and Rong Wei and Rui Tang and Qizhou Wang and Kai Shen and Jun Xiao and Qi Wu and Siliang Tang and Yueting Zhuang},
  journal= {arXiv preprint arXiv:2512.00076},
  year   = {2025}
}
R2 v1 2026-07-01T08:00:04.356Z