Synthetic 3D Data Generation Pipeline for Geometric Deep Learning in Architecture

04/26/2021
by   Stanislava Fedorova, et al.
75

With the growing interest in deep learning algorithms and computational design in the architectural field, the need for large, accessible and diverse architectural datasets increases. We decided to tackle this problem by constructing a field-specific synthetic data generation pipeline that generates an arbitrary amount of 3D data along with the associated 2D and 3D annotations. The variety of annotations, the flexibility to customize the generated building and dataset parameters make this framework suitable for multiple deep learning tasks, including geometric deep learning that requires direct 3D supervision. Creating our building data generation pipeline we leveraged architectural knowledge from experts in order to construct a framework that would be modular, extendable and would provide a sufficient amount of class-balanced data samples. Moreover, we purposefully involve the researcher in the dataset customization allowing the introduction of additional building components, material textures, building classes, number and type of annotations as well as the number of views per 3D model sample. In this way, the framework would satisfy different research requirements and would be adaptable to a large variety of tasks. All code and data are made publicly available.

READ FULL TEXT

page 4

page 5

page 6

page 8

research
06/28/2021

Efficient Realistic Data Generation Framework leveraging Deep Learning-based Human Digitization

The performance of supervised deep learning algorithms depends significa...
research
10/16/2022

Comparing Synthetic Tabular Data Generation Between a Probabilistic Model and a Deep Learning Model for Education Use Cases

The ability to generate synthetic data has a variety of use cases across...
research
05/09/2020

Building a Manga Dataset "Manga109" with Annotations for Multimedia Applications

Manga, or comics, which are a type of multimodal artwork, have been left...
research
05/09/2023

Novel Synthetic Data Tool for Data-Driven Cardboard Box Localization

Application of neural networks in industrial settings, such as automated...
research
06/21/2023

Exploiting Multimodal Synthetic Data for Egocentric Human-Object Interaction Detection in an Industrial Scenario

In this paper, we tackle the problem of Egocentric Human-Object Interact...
research
10/04/2022

A Framework for Large Scale Synthetic Graph Dataset Generation

Recently there has been increasing interest in developing and deploying ...
research
12/29/2019

A Gentle Introduction to Deep Learning for Graphs

The adaptive processing of graph data is a long-standing research topic ...

Please sign up or login with your details

Forgot password? Click here to reset