A Deep Learning Approach to Urban Street Functionality Prediction Based on Centrality Measures and Stacked Denoising Autoencoder
Resource type
Authors/contributors
- Noori, Fatemeh (Author)
- Kamangir, Hamid (Author)
- A. King, Scott (Author)
- Sheta, Alaa (Author)
- Pashaei, Mohammad (Author)
- SheikhMohammadZadeh, Abbas (Author)
Title
A Deep Learning Approach to Urban Street Functionality Prediction Based on Centrality Measures and Stacked Denoising Autoencoder
Abstract
In urban planning and transportation management, the centrality characteristics of urban streets are vital measures to consider. Centrality can help in understanding the structural properties of dense traffic networks that affect both human life and activity in cities. Many cities classify urban streets to provide stakeholders with a group of street guidelines for possible new rehabilitation such as sidewalks, curbs, and setbacks. Transportation research always considers street networks as a connection between different urban areas. The street functionality classification defines the role of each element of the urban street network (USN). Some potential factors such as land use mix, accessible service, design goal, and administrators’ policies can affect the movement pattern of urban travelers. In this study, nine centrality measures are used to classify the urban roads in four cities evaluating the structural importance of street segments. In our work, a Stacked Denoising Autoencoder (SDAE) predicts a street’s functionality, then logistic regression is used as a classifier. Our proposed classifier can differentiate between four different classes adopted from the U.S. Department of Transportation (USDT): principal arterial road, minor arterial road, collector road, and local road. The SDAE-based model showed that regular grid configurations with repeated patterns are more influential in forming the functionality of road networks compared to those with less regularity in their spatial structure.
Publication
Isprs International Journal of Geo-Information
Date
JUL 2020
Volume
9
Issue
7
Pages
456
Journal Abbr
ISPRS Int. J. Geo-Inf.
Citation Key
nooriDeepLearningApproach2020
ISSN
22209964 (ISSN)
Language
English
Library Catalog
Extra
2 citations (Crossref) [2023-10-31]
WOS:000556509900001
Citation
Noori, F., Kamangir, H., A. King, S., Sheta, A., Pashaei, M., & SheikhMohammadZadeh, A. (2020). A Deep Learning Approach to Urban Street Functionality Prediction Based on Centrality Measures and Stacked Denoising Autoencoder. Isprs International Journal of Geo-Information, 9(7), 456. https://doi.org/10.3390/ijgi9070456
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