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MATCH POLICY: A Simple Pipeline from Point Cloud Registration to Manipulation Policies

Haojie Huang
Haotian Liu
Dian Wang
Robin Walters
Robert Platt
Abstract

Many manipulation tasks require the robot to rearrange objects relative to one another. Such tasks can be described as a sequence of relative poses between parts of a set of rigid bodies. In this work, we propose MATCH POLICY, a simple but novel pipeline for solving high-precision pick and place tasks. Instead of predicting actions directly, our method registers the pick and place targets to the stored demonstrations. This transfers action inference into a point cloud registration task and enables us to realize nontrivial manipulation policies without any training. MATCH POLICY is designed to solve high-precision tasks with a key-frame setting. By leveraging the geometric interaction and the symmetries of the task, it achieves extremely high sample efficiency and generalizability to unseen configurations. We demonstrate its state-of-the-art performance across various tasks on RLBench benchmark compared with several strong baselines and test it on a real robot with six tasks.

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@article{huang2025_2409.15517,
  title={ MATCH POLICY: A Simple Pipeline from Point Cloud Registration to Manipulation Policies },
  author={ Haojie Huang and Haotian Liu and Dian Wang and Robin Walters and Robert Platt },
  journal={arXiv preprint arXiv:2409.15517},
  year={ 2025 }
}
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