| | --- |
| | license: mit |
| | --- |
| | |
| | # Weight Space Representation Learning on Diverse NeRF Architectures (ICLR 2026) |
| |
|
| | [[arXiv](https://arxiv.org/abs/2502.09623) | [project page](https://cvlab-unibo.github.io/gmnerf/)] |
| |
|
| | Main dataset structure: |
| | ``` |
| | . |
| | └── nerf/ |
| | └── shapenet/ |
| | ├── hash/ # compressed into _hash.tar |
| | │ └── class_id/ |
| | │ └── nerf_id/ |
| | │ ├── train/ |
| | │ │ └── *.png # object views used to train the NeRF |
| | │ ├── grid.pth # occupancy grid parameters |
| | │ ├── nerf_weights.pth # NeRF parameters |
| | │ └── transforms_train.json # camera poses |
| | ├── mlp/ # compressed into _mlp.tar |
| | │ └── class_id/ |
| | │ └── nerf_id/ |
| | │ ├── train/ |
| | │ │ └── *.png |
| | │ ├── grid.pth |
| | │ ├── nerf_weights.pth |
| | │ └── transforms_train.json |
| | ├── triplane/ # compressed into _triplane.tar |
| | │ └── class_id/ |
| | │ └── nerf_id/ |
| | │ ├── train/ |
| | │ │ └── *.png |
| | │ ├── grid.pth |
| | │ ├── nerf_weights.pth |
| | │ └── transforms_train.json |
| | ├── test.txt # test split |
| | ├── train.txt # training split |
| | └── val.txt # validation split |
| | ``` |
| |
|
| | The official code repository will be [available soon](https://github.com/CVLAB-Unibo/gmnerf). In the meantime, here are some links to the (unpolished) code used to train the NeRFs contained in the dataset: |
| |
|
| | * [MLP-based NeRF](https://github.com/frallebini/nerf-training/blob/42e1749f5743789003da53aa6f567562497baf39/radiance_fields/nerf_nerf2vec.py#L65) |
| | * [Tri-planar NeRF](https://github.com/frallebini/nerf-training/blob/42e1749f5743789003da53aa6f567562497baf39/radiance_fields/nerf_triplane.py#L20) |
| | * [Hash-based NeRF](https://github.com/frallebini/nerf-training/blob/42e1749f5743789003da53aa6f567562497baf39/radiance_fields/nerf_hash_single_mlp_separate_enc.py#L22) |
| |
|
| | If you are interested in running this code, follow [this README](https://github.com/CVLAB-Unibo/nf2vec/blob/main/README.md) to install the required libraries. |
| |
|
| | If you find our work useful, please cite us: |
| |
|
| | ```bibtex |
| | @inproceedings{ballerini2026weight, |
| | title = {Weight Space Representation Learning on Diverse {NeRF} Architectures}, |
| | author = {Ballerini, Francesco and Zama Ramirez, Pierluigi and Di Stefano, Luigi and Salti, Samuele}, |
| | booktitle = {The Fourteenth International Conference on Learning Representations}, |
| | year = {2026} |
| | ``` |
| |
|