EgoSteer: A Full-Stack System Towards Steerable Dexterous Manipulation from Egocentric Videos
Abstract
Steerability is a defining capability of generalist robot policies, yet remains largely absent in dexterous-hand systems for lack of large-scale, language-aligned, and action-accurate demonstration data. To address this bottleneck, we present a full-stack system that scales dexterous VLA pre-training from egocentric human videos and enables data-efficient real-robot post-training. It integrates EgoSmith, a data pipeline that curates in-the-wild egocentric videos into 9.6K hours of high-quality pre-training data with 9x higher throughput and better accuracy than prior SOTA; a unified robot stack for teleoperation and human-in-the-loop correction; and EgoSteer, a world-model-enhanced VLA trained on optimized infrastructure. Human-data pre-training equips EgoSteer with language-guided manipulation priors, which are grounded through robot post-training and improved by DAgger refinement. Empirically, EgoSteer robustly executes free-form instructions across 40+ diverse tasks, demonstrating failure recovery, dexterity, and generalization. The pre-trained model also few-shot adapts to complex long-horizon tasks, including box folding, on two embodiments with 75+% success. We open-source the system, data, and model at https://egosteer.github.io/.
Community
Our full-stack system integrates EgoSmith, Robot Stack, and EgoSteer to learn from large-scale egocentric human videos and facilitate data-efficient real-robot post-training, enabling steerable dexterous manipulation across over 40 tasks alongside few-shot adaptation to complex, long-horizon tasks.
EgoSmith curates noisy egocentric videos into high-quality dexterous VLA data. It provides scalable human-hand interaction priors for language-guided robot pre-training.
Unified Robot Stack unifies teleoperation, policy inference, and human-in-the-loop correction. It enables efficient robot data collection, deployment, and DAgger-style refinement within one shared control stack.
EgoSteer is a world-model-enhanced VLA for steerable dexterous manipulation. It predicts latency-aware wrist and fingertip actions while learning action-induced visual features.
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