Litcius/Paper detail

Generative AI-Driven Data Augmentation for Crack Detection in Physical Structures

Jinwook Kim, Jinwook Kim, Joonho Seon, Soo Hyun Kim, Young Ghyu Sun, Seongwoo Lee, Jeongho Kim, Jeongho Kim, Byung-Sun Hwang, Jin Young Kim, Jin Young Kim

2024Electronics12 citationsDOIOpen Access PDF

Abstract

The accurate segmentation of cracks in structural materials is crucial for assessing the safety and durability of infrastructure. Although conventional segmentation models based on deep learning techniques have shown impressive detection capabilities in these tasks, their performance can be restricted by small amounts of training data. Data augmentation techniques have been proposed to mitigate the data availability issue; however, these systems often have limitations in texture diversity, scalability over multiple physical structures, and the need for manual annotation. In this paper, a novel generative artificial intelligence (GAI)-driven data augmentation framework is proposed to overcome these limitations by integrating a projected generative adversarial network (ProjectedGAN) and a multi-crack texture transfer generative adversarial network (MCT2GAN). Additionally, a novel metric is proposed to evaluate the quality of the generated data. The proposed method is evaluated using three datasets: the bridge crack library (BCL), DeepCrack, and Volker. From the simulation results, it is confirmed that the segmentation performance can be improved by the proposed method in terms of intersection over union (IoU) and Dice scores across three datasets.

Topics & Concepts

Generative grammarComputer scienceArtificial intelligenceGenerative modelStructural engineeringEngineeringInfrastructure Maintenance and MonitoringConcrete Corrosion and DurabilityStructural Health Monitoring Techniques