Property-Level Flood Risk Assessment Using AI-Enabled Street-View Lowest Floor Elevation Extraction and ML Imputation Across Texas
2026-04-01 • Machine Learning
Machine Learning
AI summaryⓘ
The authors show that using AI to analyze street-view images can help estimate how high floors of buildings are above street level, which is useful for flood risk assessments. They combined direct measurements from images with machine learning to fill in missing data across many areas in Texas. This method worked well for most buildings and helped estimate flood depths and expected damage more accurately at the building level. The study moves this technique from small tests to a practical system that can help communities without detailed elevation data better manage flood risks.
AI-enabled analysisstreet-view imagerylowest floor elevation (LFE)machine learning imputationRandom ForestGradient Boostingflood risk assessmentinundation depthelevation certificateproperty-specific flood damage
Authors
Xiangpeng Li, Yu-Hsuan Ho, Sam D Brody, Ali Mostafavi
Abstract
This paper argues that AI-enabled analysis of street-view imagery, complemented by performance-gated machine-learning imputation, provides a viable pathway for generating building-specific elevation data at regional scale for flood risk assessment. We develop and apply a three-stage pipeline across 18 areas of interest (AOIs) in Texas that (1) extracts LFE and the height difference between street grade and the lowest floor (HDSL) from Google Street View imagery using the Elev-Vision framework, (2) imputes missing HDSL values with Random Forest and Gradient Boosting models trained on 16 terrain, hydrologic, geographic, and flood-exposure features, and (3) integrates the resulting elevation dataset with Fathom 1-in-100 year inundation surfaces and USACE depth-damage functions to estimate property-specific interior flood depth and expected loss. Across 12,241 residential structures, street-view imagery was available for 73.4% of parcels and direct LFE/HDSL extraction was successful for 49.0% (5,992 structures). Imputation was retained for 13 AOIs where cross-validated performance was defensible, with selected models achieving R suqre values from 0.159 to 0.974; five AOIs were explicitly excluded from prediction because performance was insufficient. The results show that street-view-based elevation mapping is not universally available for every property, but it is sufficiently scalable to materially improve regional flood-risk characterization by moving beyond hazard exposure to structure-level estimates of interior inundation and expected damage. Scientifically, the study advances LFE estimation from a pilot-scale proof of concept to a regional, end-to-end workflow. Practically, it offers a replicable framework for jurisdictions that lack comprehensive Elevation Certificates but need parcel-level information to support mitigation, planning, and flood-risk management.