Official PyTorch implementation of Metric3Dv1 and Metric3Dv2:
[1] Metric3D: Towards Zero-shot Metric 3D Prediction from A Single Image
🏆 Champion in CVPR2023 Monocular Depth Estimation Challenge
[2024/8]
Metric3Dv2 is accepted by TPAMI![2024/7/5]
Our stable-diffusion alternative GeoWizard has now been accepted by ECCV 2024! Check NOW the repository and paper for the finest-grained geometry ever! 🎉🎉🎉[2024/6/25]
Json files for KITTI datasets now available! Refer to Training for more details[2024/6/3]
ONNX is supported! We appreciate @xenova for their remarkable efforts![2024/4/25]
Weights for ViT-giant2 model released![2024/4/11]
Training codes are released![2024/3/18]
HuggingFace 🤗 GPU version updated![2024/3/18]
Project page released![2024/3/18]
Metric3D V2 models released, supporting metric depth and surface normal now![2023/8/10]
Inference codes, pre-trained weights, and demo released.[2023/7]
Metric3D accepted by ICCV 2023![2023/4]
The Champion of 2nd Monocular Depth Estimation Challenge in CVPR 2023
Metric3D is a strong and robust geometry foundation model for high-quality and zero-shot metric depth and surface normal estimation from a single image. It excels at solving in-the-wild scene reconstruction. It can directly help you measure the size of structures from a single image. Now it achieves SOTA performance on over 10 depth and normal benchmarks.
Our models rank 1st on the routing KITTI and NYU benchmarks.
Backbone | KITTI δ1 ↑ | KITTI δ2 ↑ | KITTI AbsRel ↓ | KITTI RMSE ↓ | KITTI RMS_log ↓ | NYU δ1 ↑ | NYU δ2 ↑ | NYU AbsRel ↓ | NYU RMSE ↓ | NYU log10 ↓ | |
---|---|---|---|---|---|---|---|---|---|---|---|
ZoeDepth | ViT-Large | 0.971 | 0.995 | 0.053 | 2.281 | 0.082 | 0.953 | 0.995 | 0.077 | 0.277 | 0.033 |
ZeroDepth | ResNet-18 | 0.968 | 0.996 | 0.057 | 2.087 | 0.083 | 0.954 | 0.995 | 0.074 | 0.269 | 0.103 |
IEBins | SwinT-Large | 0.978 | 0.998 | 0.050 | 2.011 | 0.075 | 0.936 | 0.992 | 0.087 | 0.314 | 0.031 |
DepthAnything | ViT-Large | 0.982 | 0.998 | 0.046 | 1.985 | 0.069 | 0.984 | 0.998 | 0.056 | 0.206 | 0.024 |
Ours | ViT-Large | 0.985 | 0.998 | 0.044 | 1.985 | 0.064 | 0.989 | 0.998 | 0.047 | 0.183 | 0.020 |
Ours | ViT-giant2 | 0.989 | 0.998 | 0.039 | 1.766 | 0.060 | 0.987 | 0.997 | 0.045 | 0.187 | 0.015 |
Even compared to recent affine-invariant depth methods (Marigold and Depth Anything), our metric-depth (and normal) models still show superior performance.
#Data for Pretrain and Train | KITTI Absrel ↓ | KITTI δ1 ↑ | NYUv2 AbsRel ↓ | NYUv2 δ1 ↑ | DIODE-Full AbsRel ↓ | DIODE-Full δ1 ↑ | Eth3d AbsRel ↓ | Eth3d δ1 ↑ | |
---|---|---|---|---|---|---|---|---|---|
OmniData (v2, ViT-L) | 1.3M + 12.2M | 0.069 | 0.948 | 0.074 | 0.945 | 0.149 | 0.835 | 0.166 | 0.778 |
MariGold (LDMv2) | 5B + 74K | 0.099 | 0.916 | 0.055 | 0.961 | 0.308 | 0.773 | 0.127 | 0.960 |
DepthAnything (ViT-L) | 142M + 63M | 0.076 | 0.947 | 0.043 | 0.981 | 0.277 | 0.759 | 0.065 | 0.882 |
Ours (ViT-L) | 142M + 16M | 0.042 | 0.979 | 0.042 | 0.980 | 0.141 | 0.882 | 0.042 | 0.987 |
Ours (ViT-g) | 142M + 16M | 0.043 | 0.982 | 0.043 | 0.981 | 0.136 | 0.895 | 0.042 | 0.983 |
Our models also show powerful performance on normal benchmarks.
NYU 11.25° ↑ | NYU Mean ↓ | NYU RMS ↓ | ScanNet 11.25° ↑ | ScanNet Mean ↓ | ScanNet RMS ↓ | iBims 11.25° ↑ | iBims Mean ↓ | iBims RMS ↓ | |
---|---|---|---|---|---|---|---|---|---|
EESNU | 0.597 | 16.0 | 24.7 | 0.711 | 11.8 | 20.3 | 0.585 | 20.0 | - |
IronDepth | - | - | - | - | - | - | 0.431 | 25.3 | 37.4 |
PolyMax | 0.656 | 13.1 | 20.4 | - | - | - | - | - | - |
Ours (ViT-L) | 0.688 | 12.0 | 19.2 | 0.760 | 9.9 | 16.4 | 0.694 | 19.4 | 34.9 |
Ours (ViT-g) | 0.662 | 13.2 | 20.2 | 0.778 | 9.2 | 15.3 | 0.697 | 19.6 | 35.2 |
For the ViT models, use the following environment:
pip install -r requirements_v2.txt
For ConvNeXt-L, it is
pip install -r requirements_v1.txt
With off-the-shelf depth datasets, we need to generate json annotaions in compatible with this dataset, which is organized by:
dict(
'files':list(
dict(
'rgb': 'data/kitti_demo/rgb/xxx.png',
'depth': 'data/kitti_demo/depth/xxx.png',
'depth_scale': 1000.0 # the depth scale of gt depth img.
'cam_in': [fx, fy, cx, cy],
),
dict(
...
),
...
)
)
To generate such annotations, please refer to the "Inference" section.
In mono/configs
we provide different config setups.
Intrinsics of the canonical camera is set bellow:
canonical_space = dict(
img_size=(512, 960),
focal_length=1000.0,
),
where cx and cy is set to be half of the image size.
Inference settings are defined as
depth_range=(0, 1),
depth_normalize=(0.3, 150),
crop_size = (512, 1088),
where the images will be first resized as the crop_size
and then fed into the model.
Please refer to training/README.md. Now we provide complete json files for KITTI fine-tuning.
News: Improved ONNX support with dynamic shapes (Feature owned by @xenova. Appreciate for this outstanding contribution 🚩🚩🚩)
Now the onnx supports are availble for all three models with varying shapes. Refer to issue117 for more details.
Encoder | Decoder | Link | |
---|---|---|---|
v2-S-ONNX | DINO2reg-ViT-Small | RAFT-4iter | Download 🤗 |
v2-L-ONNX | DINO2reg-ViT-Large | RAFT-8iter | Download 🤗 |
v2-g-ONNX | DINO2reg-ViT-giant2 | RAFT-8iter | Download 🤗 |
One additional reminder for using these onnx models is reported by @norbertlink.
Now you can use Metric3D via Pytorch Hub with just few lines of code:
import torch
model = torch.hub.load('yvanyin/metric3d', 'metric3d_vit_small', pretrain=True)
pred_depth, confidence, output_dict = model.inference({'input': rgb})
pred_normal = output_dict['prediction_normal'][:, :3, :, :] # only available for Metric3Dv2 i.e., ViT models
normal_confidence = output_dict['prediction_normal'][:, 3, :, :] # see https://arxiv.org/abs/2109.09881 for details
Supported models: metric3d_convnext_tiny
, metric3d_convnext_large
, metric3d_vit_small
, metric3d_vit_large
, metric3d_vit_giant2
.
We also provided a minimal working example in hubconf.py, which hopefully makes everything clearer.
We also provided a flexible working example in metric3d_onnx_export.py to export the Pytorch Hub model to ONNX format. We could test with the following commands:
# Export the model to ONNX model
python3 onnx/metric_3d_onnx_export.py metric3d_vit_small # metric3d_vit_large/metric3d_convnext_large
# Test the inference of the ONNX model
python3 onnx/test_onnx.py metric3d_vit_small.onnx
ros2_vision_inference provides a Python example, showcasing a pipeline from image to point clouds and integrated into ROS2 systems.
Encoder | Decoder | Link | |
---|---|---|---|
v1-T | ConvNeXt-Tiny | Hourglass-Decoder | Download 🤗 |
v1-L | ConvNeXt-Large | Hourglass-Decoder | Download |
v2-S | DINO2reg-ViT-Small | RAFT-4iter | Download |
v2-L | DINO2reg-ViT-Large | RAFT-8iter | Download |
v2-g | DINO2reg-ViT-giant2 | RAFT-8iter | Download 🤗 |
- put the trained ckpt file
model.pth
inweight/
. - generate data annotation by following the code
data/gene_annos_kitti_demo.py
, which includes 'rgb', (optional) 'intrinsic', (optional) 'depth', (optional) 'depth_scale'. - change the 'test_data_path' in
test_*.sh
to the*.json
path. - run
source test_kitti.sh
orsource test_nyu.sh
.
- put the trained ckpt file
model.pth
inweight/
. - change the 'test_data_path' in
test.sh
to the image folder path. - run
source test_vit.sh
for transformers andsource test.sh
for convnets. As no intrinsics are provided, we provided by default 9 settings of focal length.
If you are interested in combining metric3D and monocular visual slam system to achieve the metric slam, you can refer to this repo.
Because the focal length is not properly set! Please find a proper focal length by modifying codes here yourself.
Because the images are too large! Use smaller ones instead.
First be sure all black padding regions at image boundaries are cropped out. Then please try again. Besides, metric 3D is not almighty. Some objects (chandeliers, drones...) / camera views (aerial view, bev...) do not occur frequently in the training datasets. We will going deeper into this and release more powerful solutions.
@article{hu2024metric3d,
title={Metric3D v2: A Versatile Monocular Geometric Foundation Model for Zero-shot Metric Depth and Surface Normal Estimation},
author={Hu, Mu and Yin, Wei and Zhang, Chi and Cai, Zhipeng and Long, Xiaoxiao and Chen, Hao and Wang, Kaixuan and Yu, Gang and Shen, Chunhua and Shen, Shaojie},
journal={arXiv preprint arXiv:2404.15506},
year={2024}
}
@article{yin2023metric,
title={Metric3D: Towards Zero-shot Metric 3D Prediction from A Single Image},
author={Wei Yin, Chi Zhang, Hao Chen, Zhipeng Cai, Gang Yu, Kaixuan Wang, Xiaozhi Chen, Chunhua Shen},
booktitle={ICCV},
year={2023}
}
The Metric 3D code is under a 2-clause BSD License. For further commercial inquiries, please contact Dr. Wei Yin [[email protected]] and Mr. Mu Hu [[email protected]].