Generative Adversarial Networks in the built environment: A comprehensive review of the application of GANs across data types and scales

AN Wu, R Stouffs, F Biljecki - Building and Environment, 2022 - Elsevier
Abstract Generative Adversarial Networks (GANs) are a type of deep neural network that
have achieved many state-of-the-art results for generative tasks. GANs can be useful in the …

Deep learning with small datasets: using autoencoders to address limited datasets in construction management

JMD Delgado, L Oyedele - Applied Soft Computing, 2021 - Elsevier
Large datasets are necessary for deep learning as the performance of the algorithms used
increases as the size of the dataset increases. Poor data management practices and the low …

Synthetic data generation using building information models

Y Hong, S Park, H Kim, H Kim - Automation in Construction, 2021 - Elsevier
Infrastructure scene understanding from image data aids diverse applications in construction
and maintenance. Recently, deep learning models have been employed to extract …

Indoor camera pose estimation via style‐transfer 3D models

J Chen, S Li, D Liu, W Lu - Computer‐Aided Civil and …, 2022 - Wiley Online Library
Many vision‐based indoor localization methods require tedious and comprehensive pre‐
map** of built environments. This research proposes a map**‐free approach to …

Synthetic-real image domain adaptation for indoor camera pose regression using a 3D model

D Acharya, CJ Tatli, K Khoshelham - ISPRS Journal of Photogrammetry and …, 2023 - Elsevier
Deep learning-based camera pose regression approaches have achieved outstanding
performance for visual indoor localisation. However, these approaches are limited by the …

[HTML][HTML] Single-image localisation using 3D models: Combining hierarchical edge maps and semantic segmentation for domain adaptation

D Acharya, R Tennakoon, S Muthu… - Automation in …, 2022 - Elsevier
Recently, deep neural networks have achieved remarkable performance in single-image
localisation, where the location and orientation of the camera is estimated using an …

Synthetic Image Generation for Training 2D Segmentation Models at Scale for Computer Vision Progress Monitoring in Construction

JD Núñez-Morales, SH Hsu… - Computing in Civil …, 2024 - ascelibrary.org
Deep learning recognition models have been widely studied to recognize construction
objects from site images. These methods require high volumes of quality data from human …

New metrics to benchmark and improve bim visibility within a synthetic image generation process for computer vision progress tracking

JD Nunez-Morales, SH Hsu, A Ibrahim… - Canadian Society of …, 2023 - Springer
Data collection, particularly ground-truth generation, is crucial for develo** computer
vision models used for construction progress monitoring applications. The performance of …

[PDF][PDF] Reality-Enhanced Synthetic Image Training Dataset for Computer Vision Construction Monitoring

JD Núñez-Morales, SH Hsu, A Ibrahim… - Proceedings of …, 2023 - researchgate.net
Recent growth in the availability of aerial and ground-level images from construction sites
has created a surge in computer vision-based techniques for construction monitoring …

SynthRetina: Revolutionizing Fundus Image Analysis Through Synthetic Data Enhancement

N Sharaf, HA Rashwan, S Abdulwahab… - Artificial Intelligence …, 2024 - ebooks.iospress.nl
In an era characterized by the rapid evolution of data-driven applications, the generation of
high-quality synthetic data has become increasingly indispensable. This serves as a crucial …