Homecs.ROarXiv:2605.29407

Phase-Conditioned Imitation Learning with Autonomous Failure Recovery for Robust Deformable Object Manipulation

cs.RO2026-05v1license

Abstract

This paper presents a phase-conditioned, force-aware framework for robust deformable object manipulation. Standard imitation learning policies such as Action Chunking with Transformers (ACT) rely on a Markovian assumption at inference, causing state aliasing when visually similar observations require contradictory actions and preventing autonomous recovery from execution failures. We address this with a closed-loop hierarchical architecture. A FiLM-conditioned ACT encoder modulates feature extraction based on the current task phase, enabling a single unified policy to produce phase-specific behaviors while sharing action dynamics across phases. A multi-modal phase predictor fusing visual, force, and pose feedback estimates the phase in real time, detecting contact failures that are invisible to vision alone and autonomously triggering recovery trajectories. The system is completed by a hybrid impedance controller for compliant execution and a haptic teleoperation interface for force-aware data collection. Ablation studies show that FiLM-based modulation significantly outperforms both unconditioned and token-level conditioned baselines, and t-SNE analysis confirms that FiLM induces well-separated, phase-specific feature representations. Validated on hanging and removing a T-shirt with dual arms, the closed-loop system improves the hanging success rate from 56\% to 87\% through autonomous error recovery. Code and videos: https://leledeyuan00.github.io/phaser/

Comments: Accepted to IEEE/ASME Transactions on Mechatronics

Cite

@article{arxiv.2605.29407,
  title  = {Phase-Conditioned Imitation Learning with Autonomous Failure Recovery for Robust Deformable Object Manipulation},
  author = {Dayuan Chen and Kai Tang and Yukuan Zhang and Kazuhiro Kosuge and Yasuhisa Hirata},
  journal= {arXiv preprint arXiv:2605.29407},
  year   = {2026}
}