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 fou...
Criminological theories have posited that the built environment impacts where crime occurs; however,...
A key indicator of urban change is construction, demolition, and renovation. Although these developm...
Accurate building characterization is a key component of multi-hazard risk analysis. Collecting such...
Objectives: Despite theoretical interest in how dimensions of the built environment can help explain...
Neighborhood attributes have been shown to influence health, but advances in neighborhood research h...
Gentrification is multidimensional and complex, but there is general agreement that visible changes ...
Gentrification is multidimensional and complex, but there is general agreement that visible changes ...
This article uses big data from images captured by Google Street View (GSV) to analyse the extent to...
Measuring the pace and spatial distribution of gentrification is important to developing policies to...
This study takes one step further to complement the application of a method for mapping informal gre...
While Google Street View (GSV) has been increasingly available for large-scale examinations of urban...
Tracking the evolution of built environments is a challenging problem in computer vision due to the ...
There is an old saying that a picture is worth a thousand words, but what if the picture or image is...
This study evaluates the use of virtual, human-interpreted, field observations using Google Street V...
We study the problem of landuse characterization at the urban-object level using deep learning algor...
Criminological theories have posited that the built environment impacts where crime occurs; however,...
A key indicator of urban change is construction, demolition, and renovation. Although these developm...
Accurate building characterization is a key component of multi-hazard risk analysis. Collecting such...
Objectives: Despite theoretical interest in how dimensions of the built environment can help explain...
Neighborhood attributes have been shown to influence health, but advances in neighborhood research h...
Gentrification is multidimensional and complex, but there is general agreement that visible changes ...
Gentrification is multidimensional and complex, but there is general agreement that visible changes ...
This article uses big data from images captured by Google Street View (GSV) to analyse the extent to...
Measuring the pace and spatial distribution of gentrification is important to developing policies to...
This study takes one step further to complement the application of a method for mapping informal gre...
While Google Street View (GSV) has been increasingly available for large-scale examinations of urban...
Tracking the evolution of built environments is a challenging problem in computer vision due to the ...
There is an old saying that a picture is worth a thousand words, but what if the picture or image is...
This study evaluates the use of virtual, human-interpreted, field observations using Google Street V...
We study the problem of landuse characterization at the urban-object level using deep learning algor...
Criminological theories have posited that the built environment impacts where crime occurs; however,...
A key indicator of urban change is construction, demolition, and renovation. Although these developm...
Accurate building characterization is a key component of multi-hazard risk analysis. Collecting such...