SIM: A mapping framework for built environment auditing based on street view imagery
Journal:
arXiv
Published Date:
May 29, 2025
Abstract
Built environment auditing refers to the systematic documentation and
assessment of urban and rural spaces' physical, social, and environmental
characteristics, such as walkability, road conditions, and traffic lights. It
is used to collect data for the evaluation of how built environments impact
human behavior, health, mobility, and overall urban functionality.
Traditionally, built environment audits were conducted using field surveys and
manual observations, which were time-consuming and costly. The emerging street
view imagery, e.g., Google Street View, has become a widely used data source
for conducting built environment audits remotely. Deep learning and computer
vision techniques can extract and classify objects from street images to
enhance auditing productivity. Before meaningful analysis, the detected objects
need to be geospatially mapped for accurate documentation. However, the mapping
methods and tools based on street images are underexplored, and there are no
universal frameworks or solutions yet, imposing difficulties in auditing the
street objects. In this study, we introduced an open source street view mapping
framework, providing three pipelines to map and measure: 1) width measurement
for ground objects, such as roads; 2) 3D localization for objects with a known
dimension (e.g., doors and stop signs); and 3) diameter measurements (e.g.,
street trees). These pipelines can help researchers, urban planners, and other
professionals automatically measure and map target objects, promoting built
environment auditing productivity and accuracy. Three case studies, including
road width measurement, stop sign localization, and street tree diameter
measurement, are provided in this paper to showcase pipeline usage.