TornadoNet: Real-Time Building Damage Detection with Ordinal Supervision
Robinson Umeike, Cuong Pham, Ryan Hausen, Thang Dao, Shane Crawford, Tanya Brown-Giammanco, Gerard Lemson, John van de Lindt, Blythe Johnston, Arik Mitschang, Trung Do

TL;DR
TornadoNet introduces a benchmark and methods for real-time building damage detection post-disaster, comparing CNN and transformer models, and proposing ordinal-aware supervision to improve severity grading accuracy.
Contribution
The paper presents TornadoNet, a new benchmark dataset and evaluation framework, along with novel ordinal-aware supervision strategies for damage severity estimation in building damage detection.
Findings
CNN models achieve higher detection accuracy and speed.
Transformer models excel in ordinal consistency and severity grading.
Ordinal supervision improves damage severity estimation accuracy.
Abstract
We present TornadoNet, a comprehensive benchmark for automated street-level building damage assessment evaluating how modern real-time object detection architectures and ordinal-aware supervision strategies perform under realistic post-disaster conditions. TornadoNet provides the first controlled benchmark demonstrating how architectural design and loss formulation jointly influence multi-level damage detection from street-view imagery, delivering methodological insights and deployable tools for disaster response. Using 3,333 high-resolution geotagged images and 8,890 annotated building instances from the 2021 Midwest tornado outbreak, we systematically compare CNN-based detectors from the YOLO family against transformer-based models (RT-DETR) for multi-level damage detection. Models are trained under standardized protocols using a five-level damage classification framework based on…
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Taxonomy
TopicsInfrastructure Maintenance and Monitoring · Advanced Neural Network Applications · Remote-Sensing Image Classification
