Procedural 3D data generation pipeline for architecture

Overview

Synthetic Dataset Generator

Authors:

This is a tool that generates a dataset of synthetic buildings of different typologies.

Arxiv Website Samples

The generated data includes:

  • Mesh files of generated buildings, .obj format
  • Rendered images of the mesh, .png format
  • Rendered segmentation masks, .png format
  • Depth annotation, .png and .exr format
  • Surface normals annotation, .png format
  • Point cloud files, .ply format (the number of points by default is 2048, can be changed in dataset_config.py)

How To Use

  • Install Blender>=2.90. After installation make sure to add blender as an Environment variable.
  • Download the package as a .zip file or:
git clone https://github.com/CDInstitute/CompoNET

*Navigate to the Building-Dataset-Generator folder.

pip install -r requirements.txt

To create completely synthetic buildings use:

run.bat

Or:

blender setup.blend --python dataset.py

Unfortunately, it is not possible to use Blender in background mode as it will not render the image masks correctly.

Note: all the parameters related to the dataset (including any specific parameters for your buildings (e.g. max and min height / width / length)) are to be provided in dataset_config.py. Default values adhere to international standards (min) and most common European values (max):

  • minimum height 3m
  • minimum length and width 6m
  • maximum length, width, height 30 m Other values to set:
  • number of dataset samples
  • building types
  • component materials
  • rendered image dimensions
  • number of points in the point clouds
  • paths to store the generated data
  • option to save the .exr files

Annotation structure

{'img': 'images/0.png', 'category': 'building', 'img_size': (256, 256), '2d_keypoints': [], 'mask': 'masks/0.png', 'img_source': 'synthetic', 'model': 'models/0.obj', 'point_cloud': 'PointCloud/0.ply', 'model_source': 'synthetic', 'trans_mat': 0, 'focal_length': 35.0, 'cam_position': (0.0, 0.0, 0.0), 'inplane_rotation': 0, 'truncated': False, 'occluded': False, 'slightly_occluded': False, 'bbox': [0.0, 0.0, 0.0, 0.0], 'material': ['concrete', 'brick']}

Performance

We ran the dataset generation algorithm for 100 model samples with different input parameters on Windows 10 OS on CPU and GPU using AMD Ryzen 7 3800-X 8-Core Processor and GeForce GTX 1080. Here we report the results for the multiview generation (3 views per model):

GPU Multiview Time (h)
1.7
2.7
0.34
0.8

Citation

Bibtex format

@inproceedings{fedorova2021synthetic,
      title={Synthetic 3D Data Generation Pipeline for Geometric Deep Learning in Architecture}, 
      author={Stanislava Fedorova and Alberto Tono and Meher Shashwat Nigam and Jiayao Zhang and Amirhossein Ahmadnia and Cecilia Bolognesi and Dominik L. Michels},
      year={2021},
}

Generated Image Samples

Owner
Computational Design Institute
501(c)(3) Research Nonprofit for Digital and Humanities
Computational Design Institute
PyTorch Implementation of VAENAR-TTS: Variational Auto-Encoder based Non-AutoRegressive Text-to-Speech Synthesis.

VAENAR-TTS - PyTorch Implementation PyTorch Implementation of VAENAR-TTS: Variational Auto-Encoder based Non-AutoRegressive Text-to-Speech Synthesis.

Keon Lee 67 Nov 14, 2022
Repo for my Tensorflow/Keras CV experiments. Mostly revolving around the Danbooru20xx dataset

SW-CV-ModelZoo Repo for my Tensorflow/Keras CV experiments. Mostly revolving around the Danbooru20xx dataset Framework: TF/Keras 2.7 Training SQLite D

20 Dec 27, 2022
Machine Learning automation and tracking

The Open-Source MLOps Orchestration Framework MLRun is an open-source MLOps framework that offers an integrative approach to managing your machine-lea

873 Jan 04, 2023
EMNLP 2020 - Summarizing Text on Any Aspects

Summarizing Text on Any Aspects This repo contains preliminary code of the following paper: Summarizing Text on Any Aspects: A Knowledge-Informed Weak

Bowen Tan 35 Nov 14, 2022
Image-Stitching - Panorama composition using SIFT Features and a custom implementaion of RANSAC algorithm

About The Project Panorama composition using SIFT Features and a custom implementaion of RANSAC algorithm (Random Sample Consensus). Author: Andreas P

Andreas Panayiotou 3 Jan 03, 2023
Repository of 3D Object Detection with Pointformer (CVPR2021)

3D Object Detection with Pointformer This repository contains the code for the paper 3D Object Detection with Pointformer (CVPR 2021) [arXiv]. This wo

Zhuofan Xia 117 Jan 06, 2023
Adversarial Texture Optimization from RGB-D Scans (CVPR 2020).

AdversarialTexture Adversarial Texture Optimization from RGB-D Scans (CVPR 2020). Scanning Data Download Please refer to data directory for details. B

Jingwei Huang 153 Nov 28, 2022
Randomizes the warps in a stock pokeemerald repo.

pokeemerald warp randomizer Randomizes the warps in a stock pokeemerald repo. Usage Instructions Install networkx and matplotlib via pip3 or similar.

Max Thomas 6 Mar 17, 2022
Code repo for "Transformer on a Diet" paper

Transformer on a Diet Reference: C Wang, Z Ye, A Zhang, Z Zhang, A Smola. "Transformer on a Diet". arXiv preprint arXiv (2020). Installation pip insta

cgraywang 31 Sep 26, 2021
A nutritional label for food for thought.

Lexiscore As a first effort in tackling the theme of information overload in content consumption, I've been working on the lexiscore: a nutritional la

Paul Bricman 34 Nov 08, 2022
Implementation of Uformer, Attention-based Unet, in Pytorch

Uformer - Pytorch Implementation of Uformer, Attention-based Unet, in Pytorch. It will only offer the concat-cross-skip connection. This repository wi

Phil Wang 72 Dec 19, 2022
Learning Neural Network Subspaces

Learning Neural Network Subspaces Welcome to the codebase for Learning Neural Network Subspaces by Mitchell Wortsman, Maxwell Horton, Carlos Guestrin,

Apple 117 Nov 17, 2022
A PyTorch based deep learning library for drug pair scoring.

Documentation | External Resources | Datasets | Examples ChemicalX is a deep learning library for drug-drug interaction, polypharmacy side effect and

AstraZeneca 597 Dec 30, 2022
Pytorch implementation of MalConv

MalConv-Pytorch A Pytorch implementation of MalConv Desciprtion This is the implementation of MalConv proposed in Malware Detection by Eating a Whole

Alexander H. Liu 58 Oct 26, 2022
Finetune the base 64 px GLIDE-text2im model from OpenAI on your own image-text dataset

Finetune the base 64 px GLIDE-text2im model from OpenAI on your own image-text dataset

Clay Mullis 82 Oct 13, 2022
transfer attack; adversarial examples; black-box attack; unrestricted Adversarial Attacks on ImageNet; CVPR2021 天池黑盒竞赛

transfer_adv CVPR-2021 AIC-VI: unrestricted Adversarial Attacks on ImageNet CVPR2021 安全AI挑战者计划第六期赛道2:ImageNet无限制对抗攻击 介绍 : 深度神经网络已经在各种视觉识别问题上取得了最先进的性能。

25 Dec 08, 2022
Graph parsing approach to structured sentiment analysis.

Fine-grained Sentiment Analysis as Dependency Graph Parsing This repository contains the code and datasets described in following paper: Fine-grained

Jeremy Barnes 36 Dec 12, 2022
This is the dataset for testing the robustness of various VO/VIO methods

KAIST VIO dataset This is the dataset for testing the robustness of various VO/VIO methods You can download the whole dataset on KAIST VIO dataset Ind

1 Sep 01, 2022
An interpreter for RASP as described in the ICML 2021 paper "Thinking Like Transformers"

RASP Setup Mac or Linux Run ./setup.sh . It will create a python3 virtual environment and install the dependencies for RASP. It will also try to insta

141 Jan 03, 2023
EFENet: Reference-based Video Super-Resolution with Enhanced Flow Estimation

EFENet EFENet: Reference-based Video Super-Resolution with Enhanced Flow Estimation Code is a bit messy now. I woud clean up soon. For training the EF

Yaping Zhao 19 Nov 05, 2022