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Training-Free Tunnel Defect Inspection and Engineering Interpretation via Visual Recalibration and Entity Reconstruction

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Tunnel inspection requires outputs that can support defect localization, measurement, severity grading, and engineering documentation. Existing training-free foundation-model pipelines usually stop at coarse open-vocabulary proposals, which are difficult to use directly in interference-heavy tunnel scenes. We propose a training-free framework TunnelMIND. Specifically, language-guided defect proposals are not treated as final outputs; instead, their spatial support is recalibrated at inference time through dense visual consistency, so that coarse semantic anchors can be transformed into more reliable prompts under tunnel-specific hard negatives. The resulting masks are further reconstructed into structured defect entities with category, location, geometry, severity, and context attributes, which are then mapped to retrieval-grounded explanation and engineering-readable report generation under expert knowledge constraints. On visible, GPR, and road defect tasks, TunnelMIND achieves F1 scores of 0.68, 0.78, and 0.72, respectively. Overall, TunnelMIND shows that training-free tunnel inspection can move beyond coarse localization toward structured defect evidence for engineering assessment.

Shipeng Liu, Liang Zhao, Dengfeng Chen, Zhanping Song• 2026

Related benchmarks

TaskDatasetResultRank
GPR InspectionGPR
Precision76
8
Road InspectionRoad
Precision76
8
Rock InspectionRock
IoU71
8
Visible InspectionVisible
Precision68
8
PPE InspectionPPE
Precision88
8
Pose InspectionPose
Precision74
7
GPR Hidden Defect DetectionGPR hidden defect dataset
Precision76
6
Road defect detectionRoad tunnel defect dataset
Precision76
6
Visible Defect DetectionVisible tunnel defect dataset
Precision68
6
Tunnel defect detectionTunnel Hard-negative
Visible F164
5
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