中文版本 中文
Single Image to 3D using Cross-Domain Diffusion (CVPR 2024 Highlight)
Wonder3D reconstructs highly-detailed textured meshes from a single-view image in only 2 ∼ 3 minutes. Wonder3D first generates consistent multi-view normal maps with corresponding color images via a cross-domain diffusion model, and then leverages a novel normal fusion method to achieve fast and high-quality reconstruction.
- 2024.08.29 Fixed an issue in '/mvdiffusion/pipelines/pipeline_mvdiffusion_image' where cross-domain attention did not work correctly during classifier-free guidance (CFG) inference, causing misalignment between the RGB and normal generation results. To address this issue, we need to place the RGB and normal domain inputs in the first and second halves of the batch, respectively, before feeding them into the model. This approach differs from the typical CFG method, which separates unconditional and conditional inputs into the first and second halves of the batch. The results before and after the bug fix are shown below:
- Fixed a severe training bug. The "zero_init_camera_projection" in 'configs/train/stage1-mix-6views-lvis.yaml' should be False. Otherwise, the domain control and pose control will be invalid in the training.
- 2024.03.19 Checkout our new model GeoWizard that jointly produces depth and normal with high fidelity from single images.
- 2024.05.24 We release a large 3D native diffusion model CraftsMan3D that is directly trained on 3D representation and therefore is capable of producing complex structures.
- 2024.05.29 We release a more powerful MV cross-domain diffusion model Era3D that jointly produces 512x512 color images and normal maps, but more importantly Era3D could automatically figure out the focal length and elevation degree of the input image so that avoid geometry distortions.
# First clone the repo, and use the commands in the repo
import torch
import requests
from PIL import Image
import numpy as np
from torchvision.utils import make_grid, save_image
from diffusers import DiffusionPipeline # only tested on diffusers[torch]==0.19.3, may have conflicts with newer versions of diffusers
def load_wonder3d_pipeline():
pipeline = DiffusionPipeline.from_pretrained(
'flamehaze1115/wonder3d-v1.0', # or use local checkpoint './ckpts'
custom_pipeline='flamehaze1115/wonder3d-pipeline',
torch_dtype=torch.float16
)
# enable xformers
pipeline.unet.enable_xformers_memory_efficient_attention()
if torch.cuda.is_available():
pipeline.to('cuda:0')
return pipeline
pipeline = load_wonder3d_pipeline()
# Download an example image.
cond = Image.open(requests.get("https://d.skis.ltd/nrp/sample-data/lysol.png", stream=True).raw)
# The object should be located in the center and resized to 80% of image height.
cond = Image.fromarray(np.array(cond)[:, :, :3])
# Run the pipeline!
images = pipeline(cond, num_inference_steps=20, output_type='pt', guidance_scale=1.0).images
result = make_grid(images, nrow=6, ncol=2, padding=0, value_range=(0, 1))
save_image(result, 'result.png')
Our overarching mission is to enhance the speed, affordability, and quality of 3D AIGC, making the creation of 3D content accessible to all. While significant progress has been achieved in the recent years, we acknowledge there is still a substantial journey ahead. We enthusiastically invite you to engage in discussions and explore potential collaborations in any capacity. If you're interested in connecting or partnering with us, please don't hesitate to reach out via email ([email protected]) .
- 2024.02 We release the training codes. Welcome to train wonder3D on your personal data.
- 2023.10 We release the inference model and codes.
conda create -n wonder3d
conda activate wonder3d
pip install -r requirements.txt
pip install git+https://github.com/NVlabs/tiny-cuda-nn/#subdirectory=bindings/torch
Please switch to branch main-windows
to see details of windows setup.
see docker/README.MD
Here we provide two training scripts train_mvdiffusion_image.py
and train_mvdiffusion_joint.py
.
The training has two stages: 1) first train multi-view attentions by randomly taking normal or color flag; 2) add cross-domain attention modules into the SD model, and only optimize the newly added parameters.
You need to modify root_dir
that contain the data of the config files configs/train/stage1-mix-6views-lvis.yaml
and configs/train/stage2-joint-6views-lvis.yaml
accordingly.
# stage 1:
accelerate launch --config_file 8gpu.yaml train_mvdiffusion_image.py --config configs/train/stage1-mix-6views-lvis.yaml
# stage 2
accelerate launch --config_file 8gpu.yaml train_mvdiffusion_joint.py --config configs/train/stage2-joint-6views-lvis.yaml
- Optional. If you have troubles to connect to huggingface. Make sure you have downloaded the following models. Download the checkpoints and into the root folder.
If you are in mainland China, you may download via aliyun.
Wonder3D
|-- ckpts
|-- unet
|-- scheduler
|-- vae
...
Then modify the file ./configs/mvdiffusion-joint-ortho-6views.yaml, set pretrained_model_name_or_path="./ckpts"
- Download the SAM model. Put it to the
sam_pt
folder.
Wonder3D
|-- sam_pt
|-- sam_vit_h_4b8939.pth
- Predict foreground mask as the alpha channel. We use Clipdrop to segment the foreground object interactively.
You may also use
rembg
to remove the backgrounds.
# !pip install rembg
import rembg
result = rembg.remove(result)
result.show()
- Run Wonder3d to produce multiview-consistent normal maps and color images. Then you can check the results in the folder
./outputs
. (we userembg
to remove backgrounds of the results, but the segmentations are not always perfect. May consider using Clipdrop to get masks for the generated normal maps and color images, since the quality of masks will significantly influence the reconstructed mesh quality.)
accelerate launch --config_file 1gpu.yaml test_mvdiffusion_seq.py \
--config configs/mvdiffusion-joint-ortho-6views.yaml validation_dataset.root_dir={your_data_path} \
validation_dataset.filepaths=['your_img_file'] save_dir={your_save_path}
see example:
accelerate launch --config_file 1gpu.yaml test_mvdiffusion_seq.py \
--config configs/mvdiffusion-joint-ortho-6views.yaml validation_dataset.root_dir=./example_images \
validation_dataset.filepaths=['owl.png'] save_dir=./outputs
Interactive inference: run your local gradio demo. (Only generate normals and colors without reconstruction)
python gradio_app_mv.py # generate multi-view normals and colors
- Mesh Extraction
cd ./instant-nsr-pl
python launch.py --config configs/neuralangelo-ortho-wmask.yaml --gpu 0 --train dataset.root_dir=../{your_save_path}/cropsize-{crop_size}-cfg{guidance_scale:.1f}/ dataset.scene={scene}
see example:
cd ./instant-nsr-pl
python launch.py --config configs/neuralangelo-ortho-wmask.yaml --gpu 0 --train dataset.root_dir=../outputs/cropsize-192-cfg1.0/ dataset.scene=owl
Our generated normals and color images are defined in orthographic views, so the reconstructed mesh is also in orthographic camera space. If you use MeshLab to view the meshes, you can click Toggle Orthographic Camera
in View
tab.
Interactive inference: run your local gradio demo. (First generate normals and colors, and then do reconstructions. No need to perform gradio_app_mv.py first.)
python gradio_app_recon.py
Since there are many complaints about the Windows setup of instant-nsr-pl, we provide the NeuS-based reconstruction, which may get rid of the requirement problems.
NeuS consumes less GPU memory and favors smooth surfaces without parameters tuning. However, NeuS consumes more times and its texture may be less sharp. If you are not sensitive to time, we recommend NeuS for optimization due to its robustness.
cd ./NeuS
bash run.sh output_folder_path scene_name
Q: Tips to get better results.
- Wonder3D is sensitive the facing direciton of input images. By experiments, front-facing images always lead to good reconstruction.
- Limited by resources, current implemetation only supports limited views (6 views) and low resolution (256x256). Any images will be first resized into 256x256 for generation, so images after such a downsample that still keep clear and sharp features will lead to good results.
- Images with occlusions will cause worse reconstructions, since 6 views cannot cover the complete object. Images with less occlsuions lead to better results.
- Increate optimization steps in instant-nsr-pl, modify
trainer.max_steps: 3000
ininstant-nsr-pl/configs/neuralangelo-ortho-wmask.yaml
to more steps liketrainer.max_steps: 10000
. Longer optimization leads to better texture.
Q: The evelation and azimuth degrees of the generated views?
A: Unlike that the prior works such as Zero123, SyncDreamer and One2345 adopt object world system, our views are defined in the camera system of the input image. The six views are in the plane with 0 elevation degree in the camera system of the input image. Therefore we don't need to estimate an elevation degree for input image. The azimuth degrees of the six views are 0, 45, 90, 180, -90, -45 respectively.
Q: The focal length of the generated views?
A: We assume the input images are captured by orthographic camera, so the generated views are also in orthographic space. This design enables our model to keep strong generlaization on unreal images, but sometimes it may suffer from focal lens distortions on real-captured images.
In practice, the target object is assumed to be placed along the gravity direction.
-
Canonical coordinate system. Some prior works (e.g. MVDream and SyncDreamer) adopt a shared canonical system for all objects, whose axis
$Z_c$ shares the same direction with gravity (a). -
Input view related system. Wonder3D adopts an independent coordinate system for each object that is related to the input view.
Its
$Z_v$ and$X_v$ axes are aligned with the UV dimension of 2D input image space, and its$Y_v$ axis is vertical to the 2D image plane and passes through the center of ROI (Region of Interests) (b). -
Camera poses. Wonder3D outputs 6 views
${v_i, i=0,...,5}$ that are sampled at the$X_vOY_v$ plane of the input-view related system with a fixed radius, where the front view$v_0$ is initialized as input view and the other views are sampled with pre-defined azimuth degrees (see (b)).
We have intensively borrow codes from the following repositories. Many thanks to the authors for sharing their codes.
Wonder3D is under AGPL-3.0, so any downstream solution and products (including cloud services) that include wonder3d code or a trained model (both pretrained or custom trained) inside it should be open-sourced to comply with the AGPL conditions. If you have any questions about the usage of Wonder3D, please contact us first.
If you find this repository useful in your project, please cite the following work. :)
@article{long2023wonder3d,
title={Wonder3D: Single Image to 3D using Cross-Domain Diffusion},
author={Long, Xiaoxiao and Guo, Yuan-Chen and Lin, Cheng and Liu, Yuan and Dou, Zhiyang and Liu, Lingjie and Ma, Yuexin and Zhang, Song-Hai and Habermann, Marc and Theobalt, Christian and others},
journal={arXiv preprint arXiv:2310.15008},
year={2023}
}