Skip to content

Learning to Reconstruct 3D Non-Cuboid Room Layout from a Single RGB Image

License

Notifications You must be signed in to change notification settings

CYang0515/NonCuboidRoom

Folders and files

NameName
Last commit message
Last commit date

Latest commit

ba14669 · Sep 1, 2022

History

10 Commits
Oct 14, 2021
Oct 14, 2021
Apr 19, 2021
Oct 14, 2021
Oct 14, 2021
Oct 14, 2021
Apr 16, 2021
Sep 1, 2022
Oct 14, 2021
Apr 16, 2021
Oct 14, 2021
Apr 16, 2021

Repository files navigation

NonCuboidRoom

Paper

Learning to Reconstruct 3D Non-Cuboid Room Layout from a Single RGB Image

Cheng Yang*, Jia Zheng*, Xili Dai, Rui Tang, Yi Ma, Xiaojun Yuan.

IEEE/CVF Winter Conference on Applications of Computer Vision (WACV), 2022

[arXiv] [Paper] [Supplementary Material]

(*: Equal contribution)

Installation

The code is tested with Ubuntu 16.04, PyTorch v1.5, CUDA 10.1 and cuDNN v7.6.

# create conda env
conda create -n layout python=3.6
# activate conda env
conda activate layout
# install pytorch
conda install pytorch==1.5.0 torchvision==0.6.0 cudatoolkit=10.1 -c pytorch
# install dependencies
pip install -r requirements.txt

Data Preparation

Structured3D Dataset

Please download Structured3D dataset and our processed 2D line annotations. The directory structure should look like:

data
└── Structured3D
    │── Structured3D
    │   ├── scene_00000
    │   ├── scene_00001
    │   ├── scene_00002
    │   └── ...
    └── line_annotations.json

SUN RGB-D Dataset

Please download SUN RGB-D dataset, our processed 2D line annotation for SUN RGB-D dataset, and layout annotations of NYUv2 303 dataset. The directory structure should look like:

data
└── SUNRGBD
    │── SUNRGBD
    │    ├── kv1
    │    ├── kv2
    │    ├── realsense
    │    └── xtion
    │── sunrgbd_train.json      // our extracted 2D line annotations of SUN RGB-D train set
    │── sunrgbd_test.json       // our extracted 2D line annotations of SUN RGB-D test set
    └── nyu303_layout_test.npz  // 2D ground truth layout annotations provided by NYUv2 303 dataset

Pre-trained Models

You can download our pre-trained models here:

  • The model trained on Structured3D dataset.
  • The model trained on SUN RGB-D dataset and NYUv2 303 dataset.

Structured3D Dataset

To train the model on the Structured3D dataset, run this command:

python train.py --model_name s3d --data Structured3D

To evaluate the model on the Structured3D dataset, run this command:

python test.py --pretrained DIR --data Structured3D

NYUv2 303 Dataset

To train the model on the SUN RGB-D dataset and NYUv2 303 dataset, run this command:

# first fine-tune the model on the SUN RGB-D dataset
python train.py --model_name sunrgbd --data SUNRGBD --pretrained Structure3D_DIR --split all --lr_step []
# Then fine-tune the model on the NYUv2 subset
python train.py --model_name nyu --data SUNRGBD --pretrained SUNRGBD_DIR --split nyu --lr_step [] --epochs 10

To evaluate the model on the NYUv2 303 dataset, run this command:

python test.py --pretrained DIR --data NYU303

Inference on the customized data

To predict the results of customized images, run this command:

python test.py --pretrained DIR --data CUSTOM

Citation

@inproceedings{NonCuboidRoom,
  title     = {Learning to Reconstruct 3D Non-Cuboid Room Layout from a Single RGB Image},
  author    = {Cheng Yang and
              Jia Zheng and
              Xili Dai and
              Rui Tang and
              Yi Ma and
              Xiaojun Yuan},
  booktitle = {WACV},
  year      = {2022}
}

LICENSE

The code is released under the MIT license. Portions of the code are borrowed from HRNet-Object-Detection and CenterNet.

Acknowledgements

We would like to thank Lei Jin for providing us the code for parsing the layout annotations in SUN RGB-D dataset.

About

Learning to Reconstruct 3D Non-Cuboid Room Layout from a Single RGB Image

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages