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Auteurs principaux: Zhao, Chao, Jiang, Chunli, Luo, Lifan, Zhang, Guanlan, Yu, Hongyu, Wang, Michael Yu, Chen, Qifeng
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2505.11818
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author Zhao, Chao
Jiang, Chunli
Luo, Lifan
Zhang, Guanlan
Yu, Hongyu
Wang, Michael Yu
Chen, Qifeng
author_facet Zhao, Chao
Jiang, Chunli
Luo, Lifan
Zhang, Guanlan
Yu, Hongyu
Wang, Michael Yu
Chen, Qifeng
contents Tangram assembly, the art of human intelligence and manipulation dexterity, is a new challenge for robotics and reveals the limitations of state-of-the-arts. Here, we describe our initial exploration and highlight key problems in reasoning, planning, and manipulation for robotic tangram assembly. We present MRChaos (Master Rules from Chaos), a robust and general solution for learning assembly policies that can generalize to novel objects. In contrast to conventional methods based on prior geometric and kinematic models, MRChaos learns to assemble randomly generated objects through self-exploration in simulation without prior experience in assembling target objects. The reward signal is obtained from the visual observation change without manually designed models or annotations. MRChaos retains its robustness in assembling various novel tangram objects that have never been encountered during training, with only silhouette prompts. We show the potential of MRChaos in wider applications such as cutlery combinations. The presented work indicates that radical generalization in robotic assembly can be achieved by learning in much simpler domains.
format Preprint
id arxiv_https___arxiv_org_abs_2505_11818
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Master Rules from Chaos: Learning to Reason, Plan, and Interact from Chaos for Tangram Assembly
Zhao, Chao
Jiang, Chunli
Luo, Lifan
Zhang, Guanlan
Yu, Hongyu
Wang, Michael Yu
Chen, Qifeng
Robotics
Tangram assembly, the art of human intelligence and manipulation dexterity, is a new challenge for robotics and reveals the limitations of state-of-the-arts. Here, we describe our initial exploration and highlight key problems in reasoning, planning, and manipulation for robotic tangram assembly. We present MRChaos (Master Rules from Chaos), a robust and general solution for learning assembly policies that can generalize to novel objects. In contrast to conventional methods based on prior geometric and kinematic models, MRChaos learns to assemble randomly generated objects through self-exploration in simulation without prior experience in assembling target objects. The reward signal is obtained from the visual observation change without manually designed models or annotations. MRChaos retains its robustness in assembling various novel tangram objects that have never been encountered during training, with only silhouette prompts. We show the potential of MRChaos in wider applications such as cutlery combinations. The presented work indicates that radical generalization in robotic assembly can be achieved by learning in much simpler domains.
title Master Rules from Chaos: Learning to Reason, Plan, and Interact from Chaos for Tangram Assembly
topic Robotics
url https://arxiv.org/abs/2505.11818