English

ManiDP: Manipulability-Aware Diffusion Policy for Posture-Dependent Bimanual Manipulation

Robotics 2025-10-28 v1

Abstract

Recent work has demonstrated the potential of diffusion models in robot bimanual skill learning. However, existing methods ignore the learning of posture-dependent task features, which are crucial for adapting dual-arm configurations to meet specific force and velocity requirements in dexterous bimanual manipulation. To address this limitation, we propose Manipulability-Aware Diffusion Policy (ManiDP), a novel imitation learning method that not only generates plausible bimanual trajectories, but also optimizes dual-arm configurations to better satisfy posture-dependent task requirements. ManiDP achieves this by extracting bimanual manipulability from expert demonstrations and encoding the encapsulated posture features using Riemannian-based probabilistic models. These encoded posture features are then incorporated into a conditional diffusion process to guide the generation of task-compatible bimanual motion sequences. We evaluate ManiDP on six real-world bimanual tasks, where the experimental results demonstrate a 39.33%\% increase in average manipulation success rate and a 0.45 improvement in task compatibility compared to baseline methods. This work highlights the importance of integrating posture-relevant robotic priors into bimanual skill diffusion to enable human-like adaptability and dexterity.

Keywords

Cite

@article{arxiv.2510.23016,
  title  = {ManiDP: Manipulability-Aware Diffusion Policy for Posture-Dependent Bimanual Manipulation},
  author = {Zhuo Li and Junjia Liu and Dianxi Li and Tao Teng and Miao Li and Sylvain Calinon and Darwin Caldwell and Fei Chen},
  journal= {arXiv preprint arXiv:2510.23016},
  year   = {2025}
}

Comments

7 pages, 6 figures, Accepted and published in IROS 2025

R2 v1 2026-07-01T07:07:09.142Z