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FAR-Dex: Few-shot Data Augmentation and Adaptive Residual Policy Refinement for Dexterous Manipulation

About

Achieving human-like dexterous manipulation through the collaboration of multi-fingered hands with robotic arms remains a longstanding challenge in robotics, primarily due to the scarcity of high-quality demonstrations and the complexity of high-dimensional action spaces. To address these challenges, we propose FAR-Dex, a hierarchical framework that integrates few-shot data augmentation with adaptive residual refinement to enable robust and precise arm-hand coordination in dexterous tasks. First, FAR-DexGen leverages the IsaacLab simulator to generate diverse and physically constrained trajectories from a few demonstrations, providing a data foundation for policy training. Second, FAR-DexRes introduces an adaptive residual module that refines policies by combining multi-step trajectory segments with observation features, thereby enhancing accuracy and robustness in manipulation scenarios. Experiments in both simulation and real-world demonstrate that FAR-Dex improves data quality by 13.4% and task success rates by 7% over state-of-the-art methods. It further achieves over 80% success in real-world tasks, enabling fine-grained dexterous manipulation with strong positional generalization.

Yushan Bai, Fulin Chen, Hongzheng Sun, Yuchuang Tong, En Li, Zhengtao Zhang• 2026

Related benchmarks

TaskDatasetResultRank
InsertionReal-world
Success Rate85
11
Grasp HandleReal-world
Success Rate80
7
Grasp HandleSimulation v1 (100 trials)
Task Success Rate88
7
Insert CylinderSimulation 100 trials v1
Task Success Rate93
7
Move CardReal-world
Success Rate90
7
Move CardSimulation v1 (100 trials)
Task Success Rate95
7
Pinch PenReal-world
Success Rate80
7
Pinch PenSimulation 100 trials v1
Task Success Rate83
7
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