Please use this identifier to cite or link to this item: https://hdl.handle.net/10316/112647
Title: Using Deep Learning and Google Street View Imagery to Assess and Improve Cyclist Safety in London
Authors: Rita, Luís
Peliteiro, Miguel
Bostan, Tudor-Codrin
Tamagusko, Tiago Barreto 
Ferreira, Adelino 
Keywords: cycling; perception safety; object detection; image segmentation; road safety; risk factors
Issue Date: 2023
Publisher: MDPI
Project: UIDP/04427/2020 
Association for the Development of Civil Engineering (ACIV) 
metadata.degois.publication.title: Sustainability (Switzerland)
metadata.degois.publication.volume: 15
metadata.degois.publication.issue: 13
Abstract: Cycling is a sustainable mode of transportation with significant benefits for society. The number of cyclists on the streets depends heavily on their perception of safety, which makes it essential to establish a common metric for determining and comparing risk factors related to road safety. This research addresses the identification of cyclists’ risk factors using deep learning techniques applied to a Google Street View (GSV) imagery dataset. The research utilizes a case study approach, focusing on London, and applies object detection and image segmentation models to extract cyclists’ risk factors from GSV images. Two state-of-the-art tools, You Only Look Once version 5 (YOLOv5) and the pyramid scene parsing network (PSPNet101), were used for object detection and image segmentation. This study analyzes the results and discusses the technology’s limitations and potential for improvements in assessing cyclist safety. Approximately 2 million objects were identified, and 250 billion pixels were labeled in the 500,000 images available in the dataset. On average, 108 images were analyzed per Lower Layer Super Output Area (LSOA) in London. The distribution of risk factors, including high vehicle speed, tram/train rails, truck circulation, parked cars and the presence of pedestrians, was identified at the LSOA level using YOLOv5. Statistically significant negative correlations were found between cars and buses, cars and cyclists, and cars and people. In contrast, positive correlations were observed between people and buses and between people and bicycles. Using PSPNet101, building (19%), sky (15%) and road (15%) pixels were the most common. The findings of this research have the potential to contribute to a better understanding of risk factors for cyclists in urban environments and provide insights for creating safer cities for cyclists by applying deep learning techniques.
URI: https://hdl.handle.net/10316/112647
ISSN: 2071-1050
DOI: 10.3390/su151310270
Rights: openAccess
Appears in Collections:FCTUC Eng.Civil - Artigos em Revistas Internacionais
I&D CITTA - Artigos em Revistas Internacionais

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