Integrating GAN and Texture Synthesis for Enhanced Road Damage Detection
Tengyang Chen, Jiangtao Ren

TL;DR
This paper presents a novel method combining GAN and texture synthesis to generate diverse, realistic road damage images with controllable severity, significantly improving detection performance while reducing manual effort.
Contribution
The authors introduce an integrated approach using GAN and texture synthesis for automated, severity-controlled damage augmentation, enhancing detection accuracy and reducing manual labor.
Findings
Improved mAP by 4.1% on public dataset
Enhanced F1-score by 4.5%
Generated damage with diverse severity levels
Abstract
In the domain of traffic safety and road maintenance, precise detection of road damage is crucial for ensuring safe driving and prolonging road durability. However, current methods often fall short due to limited data. Prior attempts have used Generative Adversarial Networks to generate damage with diverse shapes and manually integrate it into appropriate positions. However, the problem has not been well explored and is faced with two challenges. First, they only enrich the location and shape of damage while neglect the diversity of severity levels, and the realism still needs further improvement. Second, they require a significant amount of manual effort. To address these challenges, we propose an innovative approach. In addition to using GAN to generate damage with various shapes, we further employ texture synthesis techniques to extract road textures. These two elements are then…
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Taxonomy
TopicsInfrastructure Maintenance and Monitoring · Advanced Neural Network Applications · Landslides and related hazards
