DL3DV Benchmark Download Instructions
This repo contains all the benchmark data, including a README, License, colmaps/images (compatible to nerfstudio and 3D gaussian splatting), scene labels and the performances of methods reported in the paper (ZipNeRF, 3D GS, MipNeRF-360, nerfacto, Instant-NGP).
Download
As the whole benchmark dataset is very big (~2.1T), we provide two ways to download: full benchmark dataset download or use a script to download a subset for memory sensitive cases.
Full benchmark dataset download
If you have enough space (more than 2.1T), download the full benchmark is simple:
# Make sure you have git-lfs installed
# (https://git-lfs.github.com/)
git lfs install
git clone https://huggingface.co/datasets/DL3DV/DL3DV-10K-Benchmark
Script download
Sometimes you may just need to flexibly download a subset the benchmark, e.g. just download several scenes, or just need images with 960P resolution (images_4 level used in the paper). To provide this flexibiliy, we provide a download.py script for use. Use this link to download.
This download script provies several different options to use:
- Download the full dataset (which is equivalent to git clone method). In total 2.1T.
- Download the full dataset with only 960P images. In total 100~150G.
- Download with specific scene name (hash name)
Environment Setup
The download script relies on huggingface hub
, tqdm
, and pandas
. You can download by the following command in your python environment. The download script was
pip install huggingface_hub tqdm pandas
After downloading huggingface_hub
, remember to login first to get ready for download.
# in terminal, use the following command and your huggingface token to login
huggingface-cli login
Download the full benchmark
To download the full dataset, use this command:
# Note, it is suggested to use --clean_cache flag as it saves space by cleaning the cache folder created by huggingface hub API.
python download.py --subset full --clean_cache
Download the full benchmark with 960P resolution (same with the paper)
Not all the methods can handle multi-resolution. Some methods have assumptions on the input resolution. So the paper uses 960P.
# Note, it is suggested to use --clean_cache flag as it saves space by cleaning the cache folder created by huggingface hub API.
python download.py --subset full --only_level4 --clean_cache
Download with specific scene name (hash name)
There is a benchmark preview page in https://github.com/DL3DV-10K/Dataset. If you just need a specific hash (e.g. 0853979305f7ecb80bd8fc2c8df916410d471ef04ed5f1a64e9651baa41d7695), use the following command:
# Note, it is suggested to use --clean_cache flag as it saves space by cleaning the cache folder created by huggingface hub API.
# e.g. a scene with hash 0853979305f7ecb80bd8fc2c8df916410d471ef04ed5f1a64e9651baa41d7695
python download.py --subset hash --hash 0853979305f7ecb80bd8fc2c8df916410d471ef04ed5f1a64e9651baa41d7695 --only_level4
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