--- license: mit task_categories: - text-to-3d - image-to-3d tags: - 3d-editing - shape-editing - shape-generation - evaluation-benchmark - siggraph2026 size_categories: - n<1K --- # Prox-E ShapeTalk Evaluation Benchmark Dataset This is the official benchmark dataset for **Prox-E: Fine-Grained 3D Shape Editing via Primitive-Based Abstractions (SIGGRAPH'26)**. ## 📄 Dataset Overview This benchmark consists of a subset of random **600 samples** from the **ShapeTalk** dataset. It is used to evaluate identity preservation, 3D quality, and edit fidelity. ## 📂 Repository Structure The repository is structured to seamlessly plug into the `Prox-E` unified evaluator: - **`input_shapes/`**: Directory containing `600` input 3D meshes in OBJ format (`.obj`). - **`rendered_images/`**: 600 high-resolution upright 2D renders (PNG) of the input shapes, produced from TRELLIS's inversion outputs. - **`point_cloud/`**: Directory containing `600` dense point cloud of the input meshes (`.npz`). - **`instructions.json`**: Key-value metadata containing evaluation prompts, object classes and part-specific keywords. - **`shapetalk_600_set.csv`**: Full detailed metadata from the original ShapeTalk dataset on this 600-sample subset. --- ## 🛠️ Usage with Prox-E Evaluation Tool ### 1. Download the Dataset You can clone this dataset repository using Git LFS: ```bash git lfs install git clone https://huggingface.co/datasets/haopt/prox-e-shapetalk-benchmark ``` ### 2. Run the Unified Evaluator Once downloaded, plug this benchmark directly into the Prox-E unified evaluation pipeline to compute metric scores (e.g., l-GD, LPIPS, DINO-I, FID, PFD, CLIP, and VQA): ```bash python -m evals.main \ --pred_dir \ --input_dir prox-e-shapetalk-benchmark/input_shapes \ --instructions_json prox-e-shapetalk-benchmark/instructions.json \ --input_render_dir prox-e-shapetalk-benchmark/rendered_images \ --input_pcd_dir prox-e-shapetalk-benchmark/point_cloud \ --output_dir \ --device cuda:0 \ --metrics identity quality fidelity \ --enable_vqa ``` Refer to the official [Prox-E repo](https://github.com/etaisella/Prox-E/tree/main/evals) for setup and full usage options! ## 📜 Citation If you use this benchmark dataset in your work, please cite the Prox-E paper and the ShapeTalk dataset: ```bibtex @inproceedings{sella2026proxefinegrained3dshape, title={Prox-E: Fine-Grained 3D Shape Editing via Primitive-Based Abstractions}, author={Etai Sella and Hao Phung and Nitay Amiel and Or Litany and Or Patashnik and Hadar Averbuch-Elor}, booktitle={Special Interest Group on Computer Graphics and Interactive Techniques Conference Conference Papers}, year={2026}, } @inproceedings{achlioptas2023shapetalk, title={{ShapeTalk}: A Language Dataset and Framework for 3D Shape Edits and Deformations}, author={Achlioptas, Panos and Huang, Ian and Sung, Minhyuk and Tulyakov, Sergey and Guibas, Leonidas}, booktitle={Conference on Computer Vision and Pattern Recognition (CVPR)}, year={2023} } ```