Housing perceptions and code enforcement: An assessment of demolition orders using street view imagery and machine intelligence
Date
2024-03-04
Authors
López Ochoa, Esteban A.
Zhai, Wei
Journal Title
Journal ISSN
Volume Title
Publisher
SAGE Publications
Abstract
The rapid growth of U.S. Sunbelt cities has intensified urban development pressures. Low-income housing demolitions are a result of such pressures as they are “low hanging fruit” for urban renewal, which can be further intensified by housing quality perceptions. By combining deep learning on Street View images (STV) with machine learning, we provide a model that accurately predicts demolition orders and allows assessing the heterogeneity of these predictions depending on the evaluator’s perceptions. Based on fast-growing San Antonio (TX) data, our results show that automated models can be useful to assess human perception biases of code enforcers.
Description
Keywords
deep mapping, city sensing, perception bias, urban renewal
Citation
López Ochoa, E. A., & Zhai, W. (2024). Housing Perceptions and Code Enforcement: An Assessment of Demolition Orders Using Street View Imagery and Machine Intelligence. Journal of Planning Education and Research, 0(0). https://doi.org/10.1177/0739456X241233976
Department
Architecture and Planning