Bimanual manipulation, fundamental to human daily activities, remains a challenging task due to its inherent complexity of coordinated control. Recent advances have enabled zero-shot learning of single-arm manipulation skills through agent-agnostic visual representations derived from human videos; however, these methods overlook crucial agent-specific information necessary for bimanual coordination, such as end-effector positions. We propose Ag2x2, a computational framework for bimanual manipulation through coordination-aware visual representations that jointly encode object states and hand motion patterns while maintaining agent-agnosticism. Extensive experiments demonstrate that Ag2x2 achieves a 73.5% success rate across 13 diverse bimanual tasks from Bi-DexHands and PerAct2, including challenging scenarios with deformable objects like ropes. This performance outperforms baseline methods and even surpasses the success rate of policies trained with expert-engineered rewards. Furthermore, we show that representations learned through Ag2x2 can be effectively leveraged for imitation learning, establishing a scalable pipeline for skill acquisition without expert supervision. By maintaining robust performance across diverse tasks without human demonstrations or engineered rewards, Ag2x2 represents a step toward scalable learning of complex bimanual robotic skills.
@article{arxiv.2507.19817,
title = {Ag2x2: Robust Agent-Agnostic Visual Representations for Zero-Shot Bimanual Manipulation},
author = {Ziyin Xiong and Yinghan Chen and Puhao Li and Yixin Zhu and Tengyu Liu and Siyuan Huang},
journal= {arXiv preprint arXiv:2507.19817},
year = {2025}
}
Comments
Accepted to IROS 2025, oral presentation. Project page link: https://ziyin-xiong.github.io/ag2x2.github.io/