Sim-and-Human Co-training for Data-Efficient and Generalizable Robotic Manipulation

Abstract

Synthetic simulation data and real-world human data provide scalable alternatives to circumvent the prohibitive costs of robot data collection. However, these sources suffer from the sim-to-real visual gap and the human-to-robot embodiment gap, respectively, which limits the policy's generalization to real-world scenarios. In this work, we identify a natural yet underexplored complementarity between these sources: simulation offers the robot action that human data lacks, while human data provides the real-world observation that simulation struggles to render. Motivated by this insight, we present SimHum, a co-training framework to simultaneously extract kinematic prior from simulated robot actions and visual prior from real-world human observations. Based on the two complementary priors, we achieve data-efficient and generalizable robotic manipulation in real-world tasks. Empirically, SimHum outperforms the baseline by up to 40\% under the same data collection budget, and achieves a 62.5\% OOD success with only 80 real data, outperforming the real only baseline by 7.1×. Videos and additional information can be found at https://kaipengfang.github.io/sim-and-humanproject website.

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