Computer vision uncovers predictors of physical urban change

Which neighborhoods experience physical improvements? In this paper, we introduce a computer vision method to measure changes in the physical appearances of neighborhoods from time-series street-level imagery. We connect changes in the physical appearance of five US cities with economic and demograp...

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Bibliographic Details
Main Authors: Kominers, Scott Duke, Glaeser, Edward L., Hidalgo, César A., Naik, Nikhil Deepak, Raskar, Ramesh
Other Authors: Massachusetts Institute of Technology. Media Laboratory
Format: Article
Published: National Academy of Sciences (U.S.) 2018
Online Access:http://hdl.handle.net/1721.1/114987
https://orcid.org/0000-0002-9894-8865
https://orcid.org/0000-0002-3254-3224
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Summary:Which neighborhoods experience physical improvements? In this paper, we introduce a computer vision method to measure changes in the physical appearances of neighborhoods from time-series street-level imagery. We connect changes in the physical appearance of five US cities with economic and demographic data and find three factors that predict neighborhood improvement. First, neighborhoods that are densely populated by college-educated adults are more likely to experience physical improvements—an observation that is compatible with the economic literature linking human capital and local success. Second, neighborhoods with better initial appearances experience, on average, larger positive improvements—an observation that is consistent with “tipping” theories of urban change. Third, neighborhood improvement correlates positively with physical proximity to the central business district and to other physically attractive neighborhoods—an observation that is consistent with the “invasion” theories of urban sociology. Together, our results provide support for three classical theories of urban change and illustrate the value of using computer vision methods and street-level imagery to understand the physical dynamics of cities.