Urban-Semantic Computer Vision: A Framework for Contextual Understanding of People in Urban Spaces

01/05/2023
by   Anthony Vanky, et al.
0

Increasing computational power and improving deep learning methods have made computer vision technologies pervasively common in urban environments. Their applications in policing, traffic management, and documenting public spaces are increasingly common. Despite the often-discussed biases in the algorithms' training and unequally borne benefits, almost all applications similarly reduce urban experiences to simplistic, reductive, and mechanistic measures. There is a lack of context, depth, and specificity in these practices that enables semantic knowledge or analysis within urban contexts, especially within the context of using and occupying urban space. This paper will critique existing uses of artificial intelligence and computer vision in urban practices to propose a new framework for understanding people, action, and public space. This paper revisits Geertz's use of thick descriptions in generating interpretive theories of culture and activity and uses this lens to establish a framework to evaluate the varied uses of computer vision technologies that weigh meaning. We discuss how the framework's positioning may differ (and conflict) between different users of the technology. This paper also discusses the current use and training of deep learning algorithms and how this process limits semantic learning and proposes three potential methodologies for gaining a more contextually specific, urban-semantic, description of urban space relevant to urbanists. This paper contributes to the critical conversations regarding the proliferation of artificial intelligence by challenging the current applications of these technologies in the urban environment by highlighting their failures within this context while also proposing an evolution of these algorithms that may ultimately make them sensitive and useful within this spatial and cultural milieu.

READ FULL TEXT

page 8

page 15

research
10/20/2022

A Survey of Computer Vision Technologies In Urban and Controlled-environment Agriculture

In the evolution of agriculture to its next stage, Agriculture 5.0, arti...
research
09/10/2018

URBAN-i: From urban scenes to mapping slums, transport modes, and pedestrians in cities using deep learning and computer vision

Within the burgeoning expansion of deep learning and computer vision acr...
research
01/30/2022

Extracting Built Environment Features for Planning Research with Computer Vision: A Review and Discussion of State-of-the-Art Approaches

This is an extended abstract for a presentation at The 17th Internationa...
research
01/16/2020

FaceLift: A transparent deep learning framework to beautify urban scenes

In the area of computer vision, deep learning techniques have recently b...
research
03/14/2023

Young Humans Make Change, Young Users Click: Creating Youth-Centered Networked Social Movements

From the urbanists' perspective, the everyday experience of young people...
research
05/22/2023

Robots in the Garden: Artificial Intelligence and Adaptive Landscapes

This paper introduces ELUA, the Ecological Laboratory for Urban Agricult...

Please sign up or login with your details

Forgot password? Click here to reset