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simmediummanipulation-datametric · varies

ReinforceGen: Hybrid Skill Policies with Automated Data Generation and Reinforcement Learning

Description

Long-horizon manipulation has been a long-standing challenge in the robotics community. We propose ReinforceGen, a system that combines task decomposition, data generation, imitation learning, and motion planning to form an initial solution, and improves each component through reinforcement-learning-based fine-tuning. ReinforceGen first segments the task into multiple localized skills, which are connected through motion planning. The skills and motion planning targets are trained with imitation

Source

http://arxiv.org/abs/2512.16861v1