This repository contains a pytorch implementation for the paper: TensoRF: Tensorial Radiance Fields. Our work present a novel approach to model and reconstruct radiance fields, which achieves super
fast training process, compact memory footprint and state-of-the-art rendering quality.
train_process.mp4
Install environment:
conda create -n TensoRF python=3.8
conda activate TensoRF
pip install torch torchvision
pip install tqdm scikit-image opencv-python configargparse lpips imageio-ffmpeg kornia lpips tensorboard
The training script is in train.py
, to train a TensoRF:
python train.py --config configs/lego.txt
we provide a few examples in the configuration folder, please note:
dataset_name
, choices = ['blender', 'llff', 'nsvf', 'tankstemple'];
shadingMode
, choices = ['MLP_Fea', 'SH'];
model_name
, choices = ['TensorVMSplit', 'TensorCP'], corresponding to the VM and CP decomposition.
You need to uncomment the last a few rows of the configuration file if you want to training with the TensorCP model;
n_lamb_sigma
and n_lamb_sh
are string type refer to the basis number of density and appearance along XYZ
dimension;
N_voxel_init
and N_voxel_final
control the resolution of matrix and vector;
N_vis
and vis_every
control the visualization during training;
You need to set --render_test 1
/--render_path 1
if you want to render testing views or path after training.
More options refer to the opt.py
.
https://1drv.ms/u/s!Ard0t_p4QWIMgQ2qSEAs7MUk8hVw?e=dc6hBm
python train.py --config configs/lego.txt --ckpt path/to/your/checkpoint --render_only 1 --render_test 1
You can just simply pass --render_only 1
and --ckpt path/to/your/checkpoint
to render images from a pre-trained
checkpoint. You may also need to specify what you want to render, like --render_test 1
, --render_train 1
or --render_path 1
.
The rendering results are located in your checkpoint folder.
You can also export the mesh by passing --export_mesh 1
:
python train.py --config configs/lego.txt --ckpt path/to/your/checkpoint --export_mesh 1
Note: Please re-train the model and don't use the pretrained checkpoints provided by us for mesh extraction, because some render parameters has changed.
We provide two options for training on your own image set:
- Following the instructions in the NSVF repo, then set the dataset_name to 'tankstemple'.
- Calibrating images with the script from NGP:
python dataLoader/colmap2nerf.py --colmap_matcher exhaustive --run_colmap
, then adjust the datadir inconfigs/your_own_data.txt
. Please check thescene_bbox
andnear_far
if you get abnormal results.
If you find our code or paper helps, please consider citing:
@INPROCEEDINGS{Chen2022ECCV,
author = {Anpei Chen and Zexiang Xu and Andreas Geiger and Jingyi Yu and Hao Su},
title = {TensoRF: Tensorial Radiance Fields},
booktitle = {European Conference on Computer Vision (ECCV)},
year = {2022}
}