ENSTRECT: A Stage-based Approach to 2.5D Structural Damage Detection
To effectively assess structural damage, it is essential to localize the instances of damage in the physical world of a civil structure. ENSTRECT is a stage-based approach designed to accomplish 2.5D structural damage detection. The method requires an image collection, the relative orientation, and...
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Zusammenfassung: | To effectively assess structural damage, it is essential to localize the
instances of damage in the physical world of a civil structure. ENSTRECT is a
stage-based approach designed to accomplish 2.5D structural damage detection.
The method requires an image collection, the relative orientation, and a point
cloud. Using these inputs, surface damages are segmented at the image level and
then mapped into the point cloud space, resulting in a segmented point cloud.
To enable further quantitative analyses, the segmented point cloud is
transformed into measurable damage instances: cracks are extracted by
contracting the clustered point cloud into a corresponding medial axis. For
areal damages, such as spalling and corrosion, a procedure is proposed to
compute the bounding polygon based on PCA and alpha shapes. With a localization
tolerance of 4cm, ENSTRECT can achieve IoUs of over 90% for cracks, 82% for
corrosion, and 41% for spalling. Detection at the instance level yields an AP50
of about 45% (cracks, spalling) and 56% (corrosion). |
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DOI: | 10.48550/arxiv.2401.03298 |