Title
Using Deep Learning And Google Street View To Estimate The Demographic Makeup Of Neighborhoods Across The United States
Abstract
The United States spends more than $250 million each year on the American Community Survey (ACS), a labor-intensive door-to-door study that measures statistics relating to race, gender, education, occupation, unemployment, and other demographic factors. Although a comprehensive source of data, the lag between demographic changes and their appearance in the ACS can exceed several years. As digital imagery becomes ubiquitous and machine vision techniques improve, automated data analysis may become an increasingly practical supplement to the ACS. Here, we present a method that estimates socioeconomic characteristics of regions spanning 200 US cities by using 50 million images of street scenes gathered with Google Street View cars. Using deep learning-based computer vision techniques, we determined the make, model, and year of all motor vehicles encountered in particular neighborhoods. Data from this census of motor vehicles, which enumerated 22 million automobiles in total (8% of all automobiles in the United States), were used to accurately estimate income, race, education, and voting patterns at the zip code and precinct level. (The average US precinct contains similar to 1,000 people.) The resulting associations are surprisingly simple and powerful. For instance, if the number of sedans encountered during a drive through a city is higher than the number of pickup trucks, the city is likely to vote for a Democrat during the next presidential election (88% chance); otherwise, it is likely to vote Republican (82%). Our results suggest that automated systems for monitoring demographics may effectively complement labor-intensive approaches, with the potential to measure demographics with fine spatial resolution, in close to real time.
Year
DOI
Venue
2017
10.1073/pnas.1700035114
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA
Keywords
Field
DocType
computer vision, deep learning, social analysis, demography
Truck,Population,Advertising,Voting,Demographic economics,Unemployment,Precinct,Geography,American Community Survey,Census,Socioeconomic status
Journal
Volume
Issue
ISSN
114
50
0027-8424
Citations 
PageRank 
References 
21
1.24
11
Authors
7
Name
Order
Citations
PageRank
Timnit Gebru1997.71
Jonathan Krause25646238.47
Yilun Wang329713.03
Duyun Chen4312.16
Jia Deng510850539.69
Erez Lieberman Aiden6211.24
Li Fei-Fei7224831135.90