Event-based Civil Infrastructure Visual Defect Detection: ev-CIVIL Dataset and Benchmark

Kashita Niranjan Udayanga Gangoda Withana Gamage, Xuanni Huo, Luca Zanatta, T. Delbruck, Cesar Cadena, Matteo Fumagalli, Silvia Tolu

Research output: Contribution to journalJournal articleResearchpeer-review

66 Downloads (Orbit)

Abstract

Small Unmanned Aerial Vehicle (UAV)-based visual inspections are a more efficient alternative to manual methods for examining civil structural defects, offering safe access to hazardous areas and significant cost savings by reducing labor requirements. However, traditional frame-based cameras, widely used in UAV-based inspections, often struggle
to capture defects under low or dynamic lighting conditions. In contrast, Dynamic Vision Sensors (DVS), or event-based cameras, excel in such scenarios by minimizing motion blur, enhancing power efficiency, and maintaining high-quality imaging across diverse lighting conditions without saturation or information loss. Despite these advantages, existing research lacks studies exploring the feasibility of using DVS for detecting civil structural defects. Moreover, there is no dedicated event-based dataset tailored for this purpose. Addressing this gap, this study introduces the first event-based civil infrastructure defect detection dataset, capturing defective surfaces as a spatio-temporal event stream using DVS. In addition to event-based data, the dataset includes grayscale intensity image frames captured simultaneously using an Active Pixel Sensor (APS). Both data types were collected using the DAVIS346 camera, which integrates DVS and APS sensors. The dataset focuses on two types of defects: cracks and spalling, and includes data from both field and laboratory environments. The field dataset comprises 318 recording sequences, documenting 458 distinct cracks and 121 distinct spalling instances. The laboratory dataset includes 362 recording sequences, covering 220 distinct cracks and 308 spalling instances. Four real-time object detection models were evaluated on it to validate the dataset’s effectiveness. The results demonstrate the dataset’s robustness in enabling accurate defect detection and classification, even under challenging lighting conditions.
Original languageEnglish
JournalStructural Health Monitoring
Number of pages25
ISSN1475-9217
DOIs
Publication statusSubmitted - 2025

Keywords

  • Event-based vision
  • Civil structural health monitoring
  • Defect detection
  • Crack
  • Spalling
  • DVS
  • Dataset
  • YOLOv6
  • SSD
  • 2D event histograms

Fingerprint

Dive into the research topics of 'Event-based Civil Infrastructure Visual Defect Detection: ev-CIVIL Dataset and Benchmark'. Together they form a unique fingerprint.

Cite this