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FieldGen: From Teleoperated Pre-Manipulation Trajectories to Field-Guided Data Generation

Published: October 23, 2025 | arXiv ID: 2510.20774v1

By: Wenhao Wang , Kehe Ye , Xinyu Zhou and more

Potential Business Impact:

Robots learn to do more tasks with less human help.

Business Areas:
Industrial Automation Manufacturing, Science and Engineering

Large-scale and diverse datasets are vital for training robust robotic manipulation policies, yet existing data collection methods struggle to balance scale, diversity, and quality. Simulation offers scalability but suffers from sim-to-real gaps, while teleoperation yields high-quality demonstrations with limited diversity and high labor cost. We introduce FieldGen, a field-guided data generation framework that enables scalable, diverse, and high-quality real-world data collection with minimal human supervision. FieldGen decomposes manipulation into two stages: a pre-manipulation phase, allowing trajectory diversity, and a fine manipulation phase requiring expert precision. Human demonstrations capture key contact and pose information, after which an attraction field automatically generates diverse trajectories converging to successful configurations. This decoupled design combines scalable trajectory diversity with precise supervision. Moreover, FieldGen-Reward augments generated data with reward annotations to further enhance policy learning. Experiments demonstrate that policies trained with FieldGen achieve higher success rates and improved stability compared to teleoperation-based baselines, while significantly reducing human effort in long-term real-world data collection. Webpage is available at https://fieldgen.github.io/.

Page Count
9 pages

Category
Computer Science:
Robotics