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Beyond visual inspection: capturing neighborhood dynamics with historical Google Street View and deep learning-based semantic segmentation

Jae Hong Kim (), Donghwan Ki (), Nene Osutei (), Sugie Lee () and John R. Hipp ()
Additional contact information
Jae Hong Kim: University of California
Donghwan Ki: Ohio State University
Nene Osutei: University of California
Sugie Lee: Hanyang University
John R. Hipp: University of California

Journal of Geographical Systems, 2024, vol. 26, issue 4, No 6, 564 pages

Abstract: Abstract While street view imagery has accumulated over the years, its use to date has been largely limited to cross-sectional studies. This study explores ways to utilize historical Google Street View (GSV) images for the investigation of neighborhood change. Using data for Santa Ana, California, an experiment is conducted to assess to what extent deep learning-based semantic segmentation, processing historical images much more efficiently than visual inspection, enables one to capture changes in the built environment. More specifically, semantic segmentation results are compared for (1) 248 sites with construction or demolition of buildings and (2) two sets of the same number of randomly selected control cases without such activity. It is found that the deep learning-based semantic segmentation can detect nearly 75% of the construction or demolition sites examined, while screening out over 60% of the control cases. The results suggest that it is particularly effective in detecting changes in the built environment with historical GSV images in areas with more buildings, less pavement, and larger-scale construction (or demolition) projects. False-positive outcomes, however, can emerge due to the imperfection of the deep learning model and the misalignment of GSV image points over years, showing some methodological challenges to be addressed in future research.

Keywords: Historical Google Street View; Difference-in-differences; Neighborhood change; Deep learning; Semantic segmentation (search for similar items in EconPapers)
JEL-codes: C21 C45 R39 (search for similar items in EconPapers)
Date: 2024
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DOI: 10.1007/s10109-023-00420-1

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