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Train Once, Deploy Anywhere: Realize Data-Efficient Dynamic Object Manipulation

Published: August 19, 2025 | arXiv ID: 2508.14042v1

By: Zhuoling Li , Xiaoyang Wu , Zhenhua Xu and more

Potential Business Impact:

Robots learn to grab many things with few examples.

Business Areas:
Simulation Software

Realizing generalizable dynamic object manipulation is important for enhancing manufacturing efficiency, as it eliminates specialized engineering for various scenarios. To this end, imitation learning emerges as a promising paradigm, leveraging expert demonstrations to teach a policy manipulation skills. Although the generalization of an imitation learning policy can be improved by increasing demonstrations, demonstration collection is labor-intensive. To address this problem, this paper investigates whether strong generalization in dynamic object manipulation is achievable with only a few demonstrations. Specifically, we develop an entropy-based theoretical framework to quantify the optimization of imitation learning. Based on this framework, we propose a system named Generalizable Entropy-based Manipulation (GEM). Extensive experiments in simulated and real tasks demonstrate that GEM can generalize across diverse environment backgrounds, robot embodiments, motion dynamics, and object geometries. Notably, GEM has been deployed in a real canteen for tableware collection. Without any in-scene demonstration, it achieves a success rate of over 97% across more than 10,000 operations.

Country of Origin
🇭🇰 Hong Kong

Page Count
19 pages

Category
Computer Science:
Robotics