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Generative Adversarial Networks in the built environment: A comprehensive review of the application of GANs across data types and scales
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 …
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
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 …
increases as the size of the dataset increases. Poor data management practices and the low …
Synthetic data generation using building information models
Infrastructure scene understanding from image data aids diverse applications in construction
and maintenance. Recently, deep learning models have been employed to extract …
and maintenance. Recently, deep learning models have been employed to extract …
Indoor camera pose estimation via style‐transfer 3D models
Many vision‐based indoor localization methods require tedious and comprehensive pre‐
map** of built environments. This research proposes a map**‐free approach to …
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
Deep learning-based camera pose regression approaches have achieved outstanding
performance for visual indoor localisation. However, these approaches are limited by the …
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
Recently, deep neural networks have achieved remarkable performance in single-image
localisation, where the location and orientation of the camera is estimated using an …
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
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 …
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
Data collection, particularly ground-truth generation, is crucial for develo** computer
vision models used for construction progress monitoring applications. The performance of …
vision models used for construction progress monitoring applications. The performance of …
[PDF][PDF] Reality-Enhanced Synthetic Image Training Dataset for Computer Vision Construction Monitoring
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 …
has created a surge in computer vision-based techniques for construction monitoring …
SynthRetina: Revolutionizing Fundus Image Analysis Through Synthetic Data Enhancement
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 …
high-quality synthetic data has become increasingly indispensable. This serves as a crucial …