T2D2
AI building inspection platform using computer vision to detect 80+ damage types from drone, photo, and thermal imagery, replacing manual visual surveys.
Last reviewed 6/2/26
How T2D2 uses AI[1][2][3]
Computer vision and deep learning, trained on hundreds of thousands of forensic inspection images from Thornton Tomasetti, detect and classify visible damage on facade and structural materials.
- • Deep convolutional neural networks classify cracks, spalls, corrosion, and other deterioration
- • Image inputs accepted from handheld cameras, mobile devices, and drones
- • Thermal and infrared imagery processed to flag leaks and trapped moisture
- • Detected conditions geolocated on CAD, BIM, or 3D models for assessment reports
AI type: Computer Vision, Deep Learning
Founded
2020
Headquarters
New York, NY
Stage
Seed
Employees
1-10
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