SIM: A mapping framework for built environment auditing based on street view imagery
Huan Ning, Zhenlong Li, Manzhu Yu, Wenpeng Yin

TL;DR
This paper presents an open source framework for mapping and measuring street view imagery objects to improve built environment audits, enabling remote, accurate, and automated urban space assessment.
Contribution
It introduces three pipelines for geospatial mapping and measurement of street view objects, filling a gap in existing tools and frameworks.
Findings
Successfully measured road widths, stop signs, and street tree diameters.
Demonstrated pipelines improve efficiency and accuracy of urban environment audits.
Framework is open source and applicable to various built environment assessment tasks.
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,…
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Taxonomy
TopicsAutomated Road and Building Extraction · Video Surveillance and Tracking Methods · Remote Sensing and LiDAR Applications
