Where are the people? Counting people in millions of street-level images to explore associations between people's urban density and urban characteristics

Journal Article (2023)
Author(s)

Francisco Garrido Valenzuela (TU Delft - Transport and Logistics)

O. Cats (TU Delft - Transport and Planning)

Sander van Cranenburgh (TU Delft - Transport and Logistics)

Research Group
Transport and Logistics
Copyright
© 2023 F.O. Garrido Valenzuela, O. Cats, S. van Cranenburgh
DOI related publication
https://doi.org/10.1016/j.compenvurbsys.2023.101971
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 F.O. Garrido Valenzuela, O. Cats, S. van Cranenburgh
Research Group
Transport and Logistics
Volume number
102
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Abstract

A thorough understanding of how urban space characteristics, such as urban equipment or network topology, affect people's density in urban spaces is essential to well-informed urban policy making. Hitherto, studies have primarily examined how the characteristics of the urban space impacts the number of people visiting different parts of the urban area (e.g., the city center). However, these studies almost without exception have used relatively small data sets, targeting specific neighborhoods or places. As a result, their findings are confined to specific areas and it is unclear to what extent their findings generalize to other urban areas. This study addresses this gap. We propose a new computer vision-based method to study how the urban space is associated with people's urban density in outdoor urban spaces. Specifically, our method uses a pre-trained object detection model to identify and count people as well as urban-related objects, such as presence of cars, and benches in millions street-level images collected throughout the Netherlands. Importantly, each street-level image is geo-located. Therefore, for each detected person and object its location is known. In turn, we regress urban space characteristics and urban-related objects on the number of people identified as a proxy for density in urban spaces. Our results show that higher numbers of people tend to be observed in places with smaller blocks, suggesting that compact urban development may be an effective way to increase people's density. Moreover, we find that the presence of food places and bicycles is associated with more people, indicating that urban planners could study the location of these amenities to attract more visitors to urban spaces and exploring the causality effects in this relationship. Our methodology offers a complementary way to monitor how the urban space is used over the time and to assess the effectiveness of urban interventions and policies.