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SimWeaver: Zero-Shot RGB Sim-to-Real for Deformable Manipulation

Wenkang Hu, Haoran Wang, Yitong Li, Liu Liu, Mengao Zhao, Lai Jiang, Xincheng Tang, Junhang Wei, Zhengjie Shu, Zhendong Wang, Zhizhong Su, Huamin Wang, Ruigang Yang

Year
2026
Access
Open access

Abstract

RGB sim-to-real for deformable manipulation has remained largely unsolved without real-world fine-tuning. We present SimWeaver, which trains zero-shot RGB VLA policies on 200 simulated demonstrations per task, reaching above 80% per-task and 91% average real-world success across 5 diverse deformable tasks including plastic-bag manipulation, without teleoperation or per-task calibration. SimWeaver combines a reliable measurement-backed simulator (SimWeaver-Sim) with an extensible asset framework supporting single-image generation(SimWeaver-Asset), a deterministic topology-aware trajectory synthesizer (SimWeaver-Syn), and a sim-to-real protocol with ISP-aware photometric augmentation (SimWeaver-Real). On silk grasping, the sim-trained policy reaches 100% under visual distribution shifts where real-data baselines drop to 9-70%, at two orders of magnitude lower per-trajectory cost. We will release SimWeaver and a representative asset subset. Project page: https://simweaver.github.io/

Keywords

cs.RO

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