--- license: apache-2.0 pipeline_tag: image-to-3d tags: - gaussian-splatting - 3d - surface-reconstruction --- # Revisiting Photometric Ambiguity for Accurate Gaussian-Splatting Surface Reconstruction This repository provides the reconstructed meshes and resources for the paper [Revisiting Photometric Ambiguity for Accurate Gaussian-Splatting Surface Reconstruction](https://huggingface.co/papers/2605.12494). **Authors**: Jiahe Li, Jiawei Zhang, Xiao Bai, Jin Zheng, Xiaohan Yu, Lin Gu, Gim Hee Lee. * [📚 Paper](https://huggingface.co/papers/2605.12494) * [🌐 Project Page](https://fictionarry.github.io/AmbiSuR-Proj/) * [💻 Code](https://github.com/Fictionarry/AmbiSuR) ## Overview AmbiSuR is a framework that explores an intrinsic solution upon Gaussian Splatting for photometric ambiguity-robust surface 3D reconstruction. By revisiting built-in primitive-wise ambiguities, the framework introduces a photometric disambiguation constraint and an ambiguity indication module to identify and guide the correction of underconstrained reconstructions, achieving high-performance surface formation in challenging scenarios. ## Reconstruction on Tanks and Temples and DTU Datasets Here we provide the reconstructed meshes of the paper's experiments from AmbiSuR. You can browse all the released meshes at: - `ambisur--meshes-eval/`: The meshes on DTU/TnT datasets, with strict filtering strategy for evaluation. - `ambisur--meshes-vis/`: The meshes on DTU/TnT datasets, with loose filtering strategy for visualization. Metrics shall be reproduced with the results with postfix of `-eval`. ## Download ```python from huggingface_hub import snapshot_download snapshot_download(repo_id="Fictionary/AmbiSuR", cache_dir='./AmbiSuR/results', local_dir ='./AmbiSuR/results') ``` or use Git to clone this repository with LFS. ## Citation ```bibtex @inproceedings{li2026ambisur, title={Revisiting Photometric Ambiguity for Accurate Gaussian-Splatting Surface Reconstruction}, author={Li, Jiahe and Zhang, Jiawei and Bai, Xiao and Zheng, Jin and Yu, Xiaohan and Gu, Lin and Lee, Gim Hee}, booktitle={International Conference on Machine Learning}, year={2026}, organization={PMLR} } ```