Fine-Grained Car Detection for Visual Census Estimation
Timnit Gebru, Jonathan Krause, Yilun Wang, Duyun Chen, Jia Deng, Li, Fei-Fei

TL;DR
This paper develops a large-scale computer vision system to detect and classify cars from Street View images, enabling socioeconomic and urban analysis with high correlation to ground truth data.
Contribution
It introduces the largest fine-grained car dataset and detection system, linking visual car data to city demographics and sociological insights.
Findings
High correlation (r=0.82) with income data
Successful large-scale car detection and classification
Revealed relationships between cars and neighborhood characteristics
Abstract
Targeted socioeconomic policies require an accurate understanding of a country's demographic makeup. To that end, the United States spends more than 1 billion dollars a year gathering census data such as race, gender, education, occupation and unemployment rates. Compared to the traditional method of collecting surveys across many years which is costly and labor intensive, data-driven, machine learning driven approaches are cheaper and faster--with the potential ability to detect trends in close to real time. In this work, we leverage the ubiquity of Google Street View images and develop a computer vision pipeline to predict income, per capita carbon emission, crime rates and other city attributes from a single source of publicly available visual data. We first detect cars in 50 million images across 200 of the largest US cities and train a model to predict demographic attributes using…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Human Mobility and Location-Based Analysis · Data-Driven Disease Surveillance
