The proliferation of street view images (SVIs) and the constant advancements in deep learning techniques have enabled urban analysts to extract and evaluate urban perceptions from large-scale urban streetscapes. However, many existing analytical frameworks have been found to lack interpretability due to their end-to-end structure and "black-box" nature, thereby limiting their value as a planning support tool. In this context, we propose a five-step machine learning framework for extracting neighborhood-level urban perceptions from panoramic SVIs, specifically emphasizing feature and result interpretability. By utilizing the MIT Place Pulse data, the developed framework can systematically extract six dimensions of urban perceptions from the ...
© Springer International Publishing AG 2016. Computer vision methods that quantify the perception of...
Streets hold up to 90% of public space in densely built urban areas, they are ubiquitous and thus ho...
Thesis: S.M., Massachusetts Institute of Technology, Department of Architecture, 2014.Cataloged from...
The proliferation of street view images (SVIs) and the constant advancements in deep learning techni...
Recently, many new studies applying computer vision (CV) to street view imagery (SVI) datasets to ob...
The interactions of individuals with city neighbourhoods is determined, in part, by the perceived qu...
Given the present size of modern cities, it is beyond the perceptual capacity of most people to deve...
The assessments on human perception of urban spaces are essential for the management and upkeep of s...
Abstract. Human observers make a variety of perceptual inferences about pictures of places based on ...
This vision paper summaries the methods of using social media data (SMD) to measure urban perception...
Urban vitality has significant practical implications for urban management and planning. In this stu...
The release of Google Street View in 2007 inspired several new panoramic street-level imagery platfo...
An understanding of how people perceive attractive or unattractive places in cities is vitally impor...
Social science literature has shown a strong connection between the visual appearance of a city’s ne...
For social scientists, developing an empirical connection between the physical appearance of a city ...
© Springer International Publishing AG 2016. Computer vision methods that quantify the perception of...
Streets hold up to 90% of public space in densely built urban areas, they are ubiquitous and thus ho...
Thesis: S.M., Massachusetts Institute of Technology, Department of Architecture, 2014.Cataloged from...
The proliferation of street view images (SVIs) and the constant advancements in deep learning techni...
Recently, many new studies applying computer vision (CV) to street view imagery (SVI) datasets to ob...
The interactions of individuals with city neighbourhoods is determined, in part, by the perceived qu...
Given the present size of modern cities, it is beyond the perceptual capacity of most people to deve...
The assessments on human perception of urban spaces are essential for the management and upkeep of s...
Abstract. Human observers make a variety of perceptual inferences about pictures of places based on ...
This vision paper summaries the methods of using social media data (SMD) to measure urban perception...
Urban vitality has significant practical implications for urban management and planning. In this stu...
The release of Google Street View in 2007 inspired several new panoramic street-level imagery platfo...
An understanding of how people perceive attractive or unattractive places in cities is vitally impor...
Social science literature has shown a strong connection between the visual appearance of a city’s ne...
For social scientists, developing an empirical connection between the physical appearance of a city ...
© Springer International Publishing AG 2016. Computer vision methods that quantify the perception of...
Streets hold up to 90% of public space in densely built urban areas, they are ubiquitous and thus ho...
Thesis: S.M., Massachusetts Institute of Technology, Department of Architecture, 2014.Cataloged from...