Knowledge-Driven Imitation Learning: Enabling Generalization Across Diverse Conditions
Abstract
Imitation learning has emerged as a powerful paradigm in robot manipulation, yet its generalization capability remains constrained by object-specific dependencies in limited expert demonstrations. To address this challenge, we propose knowledge-driven imitation learning, a framework that leverages external structural semantic knowledge to abstract object representations within the same category. We introduce a novel semantic keypoint graph as a knowledge template and develop a coarse-to-fine template-matching algorithm that optimizes both structural consistency and semantic similarity. Evaluated on three real-world robotic manipulation tasks, our method achieves superior performance, surpassing image-based diffusion policies with only one-quarter of the expert demonstrations. Extensive experiments further demonstrate its robustness across novel objects, backgrounds, and lighting conditions. This work pioneers a knowledge-driven approach to data-efficient robotic learning in real-world settings. Code and more materials are available on https://knowledge-driven.github.io/.
Cite
@article{arxiv.2506.21057,
title = {Knowledge-Driven Imitation Learning: Enabling Generalization Across Diverse Conditions},
author = {Zhuochen Miao and Jun Lv and Hongjie Fang and Yang Jin and Cewu Lu},
journal= {arXiv preprint arXiv:2506.21057},
year = {2025}
}
Comments
IROS 2025