CitySurfaces: City-Scale Semantic Segmentation of Sidewalk Materials

01/06/2022
by   Maryam Hosseini, et al.
14

While designing sustainable and resilient urban built environment is increasingly promoted around the world, significant data gaps have made research on pressing sustainability issues challenging to carry out. Pavements are known to have strong economic and environmental impacts; however, most cities lack a spatial catalog of their surfaces due to the cost-prohibitive and time-consuming nature of data collection. Recent advancements in computer vision, together with the availability of street-level images, provide new opportunities for cities to extract large-scale built environment data with lower implementation costs and higher accuracy. In this paper, we propose CitySurfaces, an active learning-based framework that leverages computer vision techniques for classifying sidewalk materials using widely available street-level images. We trained the framework on images from New York City and Boston and the evaluation results show a 90.5 evaluated the framework using images from six different cities, demonstrating that it can be applied to regions with distinct urban fabrics, even outside the domain of the training data. CitySurfaces can provide researchers and city agencies with a low-cost, accurate, and extensible method to collect sidewalk material data which plays a critical role in addressing major sustainability issues, including climate change and surface water management.

READ FULL TEXT

page 3

page 4

page 5

page 6

page 8

page 9

page 10

page 11

research
09/20/2023

Self-supervised learning unveils change in urban housing from street-level images

Cities around the world face a critical shortage of affordable and decen...
research
11/18/2019

Streetify: Using Street View Imagery And Deep Learning For Urban Streets Development

The classification of streets on road networks has been focused on the v...
research
06/28/2022

Towards Global-Scale Crowd+AI Techniques to Map and Assess Sidewalks for People with Disabilities

There is a lack of data on the location, condition, and accessibility of...
research
08/11/2016

A machine learning method for the large-scale evaluation of urban visual environment

Given the size of modern cities in the urbanising age, it is beyond the ...
research
04/08/2021

Re-designing cities with conditional adversarial networks

This paper introduces a conditional generative adversarial network to re...
research
08/15/2023

The Urban Toolkit: A Grammar-based Framework for Urban Visual Analytics

While cities around the world are looking for smart ways to use new adva...
research
11/21/2020

Semantic-Based VPS for Smartphone Localization in Challenging Urban Environments

Accurate smartphone-based outdoor localization system in deep urban cany...

Please sign up or login with your details

Forgot password? Click here to reset