Skip to content

MIT-SPARK/MiDiffusion

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

3 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Mixed Diffusion Models for 3D Indoor Scene Synthesis

This repository contains the model code that accompanies our paper Mixed Diffusion for 3D Indoor Scene Synthesis. We present MiDiffusion, a novel mixed discrete-continuous diffusion model architecture, designed to synthesize plausible 3D indoor scenes from given room types, floor plans, and potentially pre-existing objects. Our approach uniquely implements structured corruption across the mixed discrete semantic and continuous geometric domains, resulting in a better conditioned problem for the reverse denoising step.

Architecture

We place the preprocessing and evaluation scripts for the 3D-FRONT and 3D-FUTURE datasets based on ATISS in our ThreedFront dataset repository to facilitate comparisons with other 3D scene synthesis methods using the same datasets. ThreedFront also contains dataset class implementations as a standalone threed_front package, which is a dependency of this repository. We borrow code from VQ-Diffusion and DiffuScene for discrete and continuous domain diffusion implementations, respectively. Please refer to related licensing information in external_licenses.

If you found this work useful, please consider citing our paper:

@article{Hu24arxiv-MiDiffusion,
  author={Siyi Hu and Diego Martin Arroyo and Stephanie Debats and Fabian Manhardt and Luca Carlone and Federico Tombari},
  title={Mixed Diffusion for 3D Indoor Scene Synthesis},
  journal = {arXiv preprint: 2405.21066},
  pdf = {https://arxiv.org/abs/2405.21066},
  Year = {2024}
}

Installation & Dependencies

Our code is developed in Python 3.8 with PyTorch 1.12.1 and CUDA 11.3.

First, from this root directory, clone ThreedFront:

git clone [email protected]:MIT-SPARK/ThreedFront.git ../ThreedFront

You can either install all dependencies listed in ThreedFront, or, if you also want to use threed_front for other projects, install threed_front separately and add its site-packages directory. For example, if you use virtualenv, run

echo "<ThreedFront_venv_dir>/lib/python3.x/site-packages" > <MiDiffusion_venv_dir>/lib/python3.x/site-packages/threed-front.pth

Then install threed_front and midiffusion. midiffusion requires two additional dependencies: einops==0.8.0 and wandb==0.17.1.

# install threed-front
pip install -e ../ThreedFront

# install midiffusion
python setup.py build_ext --inplace
pip install -e .

Dataset

We use 3D-FRONT and 3D-FUTURE datasets for training and testing of our model. Please follow the data preprocessing steps in ThreedFront. We use the same data files as those included in ThreedFront/data_files for training and evaluation steps. Please check that PATH_TO_DATASET_FILES and PATH_TO_PROCESSED_DATA in scripts/utils.py are pointing to the right directories.

Training

To train diffuscene on 3D Front-bedrooms, you can run

python scripts/train_diffusion.py <path_to_config_file> --experiment_tag <experiment_name>

We provide example config files in the config/ directory. This train script saves a copy of the config file (as config.yaml) and log intermediate model weights to output/log/<experiment_name> unless --output_directory is set otherwise.

Experiment

The scripts/generate_results.py script can compute and pickle synthetic layouts generated by a trained model through the threed_front package.

python scripts/generate_results.py <path_to_model_file> --result_tag <result_name>

This script loads config from the config.yaml file in the same directory as <path_to_model_file> if not specified. The results will be saved to output/predicted_results/<result_name>/results.pkl unless --output_directory is set otherwise. We can run experiments with different object constraints using the same model by setting the --experiment argument. The options include:

  • synthesis (default): scene synthesis problem given input floor plans.
  • scene_completion: scene completion given floor plans and existing objects (specified via --n_known_objects).
  • furniture_arrangement: scene completion given floor plans, object labels and sizes.
  • object_conditioned: scene completion given floor plans, object labels.
  • scene_completion_conditioned: scene completion given floor plans, existing objects, and labels of remaining objects.

You can then render the predicted layout to top-down projection images using scripts/render_results.py in ThreedFront for evaluation.

python ../ThreedFront/scripts/render_results.py output/predicted_results/<result_name>/results.pkl

Please read this script for rendering options.

Evaluation

The evaluation scripts in the scripts/ directory of ThreedFront include:

  • evaluate_kl_divergence_object_category.py: Compute KL-divergence between ground-truth and synthesized object category distributions.
  • compute_fid_scores.py: Compute average FID or KID (if run with "--compute_kid" flag) between ground-truth and synthesized layout images.
  • synthetic_vs_real_classifier.py: Train image classifier to distinguish real and synthetic projection images, and compute average classification accuracy.
  • bbox_analysis.py: Count the number of out-of-boundary object bounding boxes and compute pairwise bounding boxes IoU (this requires sampled floor plan boundary and normal points).

Video

An overview of MiDiffusion is available on YouTube:

MiDiffusion Youtube Video

Relevant Research

Please also check out the following papers that explore similar ideas:

  • Fast and Flexible Indoor Scene Synthesis via Deep Convolutional Generative Models pdf
  • Sceneformer: Indoor Scene Generation with Transformers pdf
  • ATISS: Autoregressive Transformers for Indoor Scene Synthesis pdf
  • Indoor Scene Generation from a Collection of Semantic-Segmented Depth Images pdf
  • Scene Synthesis via Uncertainty-Driven Attribute Synchronization pdf
  • LEGO-Net: Learning Regular Rearrangements of Objects in Rooms pdf
  • DiffuScene: Denoising Diffusion Models for Generative Indoor Scene Synthesis pdf

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages