StructDamage:A Large Scale Unified Crack and Surface Defect Dataset for Robust Structural Damage Detection
arXiv cs.CV / 3/12/2026
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Key Points
- Introduces StructDamage, a large-scale crack and surface defect dataset with approximately 78,093 images spanning nine surface types to support robust structural damage detection.
- The dataset is assembled by harmonizing and reannotating 32 public datasets, covering concrete structures, pavements, masonry, bridges, and historic buildings, with a folder-level hierarchy for training CNNs and Vision Transformers.
- Baseline evaluations across fifteen DL architectures show macro F1-scores above 0.96 on twelve models, with DenseNet201 achieving 98.62% accuracy, indicating strong performance potential and generalization.
- The work emphasizes reproducible research and fair evaluation by providing thorough documentation and a standardized structure to enable researchers and practitioners to compare methods consistently.
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