While Google Street View (GSV) has been increasingly available for large-scale examinations of urban landscapes, little is known about how to use this promising data source more cautiously and effectively. Using data for Santa Ana, California, as an example, this study provides an empirical assessment of the sensitivity of GSV-based streetscape measures and their variation patterns. The results show that the measurement outcomes can vary substantially with changes in GSV acquisition parameter settings, specifically spacing and direction. The sensitivity is found to be particularly high for some measurement targets, including humans, objects, and sidewalks. Some of these elements, such as buildings and sidewalks, also show highly correlated ...
We study the problem of landuse characterization at the urban-object level using deep learning algor...
View factors for sky, trees, and buildings are three important parameters of the urban outdoor envir...
Recently, many new studies applying computer vision (CV) to street view imagery (SVI) datasets to ob...
Objectives: Despite theoretical interest in how dimensions of the built environment can help explain...
This study takes one step further to complement the application of a method for mapping informal gre...
Researchers in many disciplines have turned to Google Street View to replace pedestrian- or carbased...
Street imagery is a promising big data source providing current and historical images in more than 1...
Social science literature has shown a strong connection between the visual appearance of a city’s ne...
While street view imagery has accumulated over the years, its use to date has been largely limi...
Neighborhood attributes have been shown to influence health, but advances in neighborhood research h...
Land use mix reflects the availability of diverse destinations providing opportunities for active tr...
Multiple studies have revealed the impact of walkable environments on physical activity. Scholars at...
Abstract Background Although previous research has highlighted the association between the built en...
Streets hold up to 90% of public space in densely built urban areas, they are ubiquitous and thus ho...
<div><p>Background</p><p>Street imagery is a promising and growing big data source providing current...
We study the problem of landuse characterization at the urban-object level using deep learning algor...
View factors for sky, trees, and buildings are three important parameters of the urban outdoor envir...
Recently, many new studies applying computer vision (CV) to street view imagery (SVI) datasets to ob...
Objectives: Despite theoretical interest in how dimensions of the built environment can help explain...
This study takes one step further to complement the application of a method for mapping informal gre...
Researchers in many disciplines have turned to Google Street View to replace pedestrian- or carbased...
Street imagery is a promising big data source providing current and historical images in more than 1...
Social science literature has shown a strong connection between the visual appearance of a city’s ne...
While street view imagery has accumulated over the years, its use to date has been largely limi...
Neighborhood attributes have been shown to influence health, but advances in neighborhood research h...
Land use mix reflects the availability of diverse destinations providing opportunities for active tr...
Multiple studies have revealed the impact of walkable environments on physical activity. Scholars at...
Abstract Background Although previous research has highlighted the association between the built en...
Streets hold up to 90% of public space in densely built urban areas, they are ubiquitous and thus ho...
<div><p>Background</p><p>Street imagery is a promising and growing big data source providing current...
We study the problem of landuse characterization at the urban-object level using deep learning algor...
View factors for sky, trees, and buildings are three important parameters of the urban outdoor envir...
Recently, many new studies applying computer vision (CV) to street view imagery (SVI) datasets to ob...