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FreeMesh: Boosting Mesh Generation with Coordinates Merging

19 May 2025
Jian Liu
Haohan Weng
Biwen Lei
Xianghui Yang
Zibo Zhao
Zhuo Chen
Song Guo
Tao Han
Chunchao Guo
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Abstract

The next-coordinate prediction paradigm has emerged as the de facto standard in current auto-regressive mesh generation methods. Despite their effectiveness, there is no efficient measurement for the various tokenizers that serialize meshes into sequences. In this paper, we introduce a new metric Per-Token-Mesh-Entropy (PTME) to evaluate the existing mesh tokenizers theoretically without any training. Building upon PTME, we propose a plug-and-play tokenization technique called coordinate merging. It further improves the compression ratios of existing tokenizers by rearranging and merging the most frequent patterns of coordinates. Through experiments on various tokenization methods like MeshXL, MeshAnything V2, and Edgerunner, we further validate the performance of our method. We hope that the proposed PTME and coordinate merging can enhance the existing mesh tokenizers and guide the further development of native mesh generation.

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@article{liu2025_2505.13573,
  title={ FreeMesh: Boosting Mesh Generation with Coordinates Merging },
  author={ Jian Liu and Haohan Weng and Biwen Lei and Xianghui Yang and Zibo Zhao and Zhuo Chen and Song Guo and Tao Han and Chunchao Guo },
  journal={arXiv preprint arXiv:2505.13573},
  year={ 2025 }
}
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