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Main Authors: Costa, Miguel, Marques, Manuel, Azevedo, Carlos Lima, Siebert, Felix Wilhelm, Moura, Filipe
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.09835
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author Costa, Miguel
Marques, Manuel
Azevedo, Carlos Lima
Siebert, Felix Wilhelm
Moura, Filipe
author_facet Costa, Miguel
Marques, Manuel
Azevedo, Carlos Lima
Siebert, Felix Wilhelm
Moura, Filipe
contents Cycling is critical for cities to transition to more sustainable transport modes. Yet, safety concerns remain a critical deterrent for individuals to cycle. If individuals perceive an environment as unsafe for cycling, it is likely that they will prefer other means of transportation. Yet, capturing and understanding how individuals perceive cycling risk is complex and often slow, with researchers defaulting to traditional surveys and in-loco interviews. In this study, we tackle this problem. We base our approach on using pairwise comparisons of real-world images, repeatedly presenting respondents with pairs of road environments and asking them to select the one they perceive as safer for cycling, if any. Using the collected data, we train a siamese-convolutional neural network using a multi-loss framework that learns from individuals' responses, learns preferences directly from images, and includes ties (often discarded in the literature). Effectively, this model learns to predict human-style perceptions, evaluating which cycling environments are perceived as safer. Our model achieves good results, showcasing this approach has a real-life impact, such as improving interventions' effectiveness. Furthermore, it facilitates the continuous assessment of changing cycling environments, permitting short-term evaluations of measures to enhance perceived cycling safety. Finally, our method can be efficiently deployed in different locations with a growing number of openly available street-view images.
format Preprint
id arxiv_https___arxiv_org_abs_2412_09835
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Which cycling environment appears safer? Learning cycling safety perceptions from pairwise image comparisons
Costa, Miguel
Marques, Manuel
Azevedo, Carlos Lima
Siebert, Felix Wilhelm
Moura, Filipe
Computer Vision and Pattern Recognition
Cycling is critical for cities to transition to more sustainable transport modes. Yet, safety concerns remain a critical deterrent for individuals to cycle. If individuals perceive an environment as unsafe for cycling, it is likely that they will prefer other means of transportation. Yet, capturing and understanding how individuals perceive cycling risk is complex and often slow, with researchers defaulting to traditional surveys and in-loco interviews. In this study, we tackle this problem. We base our approach on using pairwise comparisons of real-world images, repeatedly presenting respondents with pairs of road environments and asking them to select the one they perceive as safer for cycling, if any. Using the collected data, we train a siamese-convolutional neural network using a multi-loss framework that learns from individuals' responses, learns preferences directly from images, and includes ties (often discarded in the literature). Effectively, this model learns to predict human-style perceptions, evaluating which cycling environments are perceived as safer. Our model achieves good results, showcasing this approach has a real-life impact, such as improving interventions' effectiveness. Furthermore, it facilitates the continuous assessment of changing cycling environments, permitting short-term evaluations of measures to enhance perceived cycling safety. Finally, our method can be efficiently deployed in different locations with a growing number of openly available street-view images.
title Which cycling environment appears safer? Learning cycling safety perceptions from pairwise image comparisons
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.09835