Projects per year
Abstract
As an emerging and freely available urban big data, Street View Imagery (SVI) has proven to be a useful resource to examine various urban phenomena in human behavior, the built environment and their interactions. However, due to technical limitations, previous studies often focused on general pedestrians and ignored certain population subgroups such as older adults. In this study, we develop an innovative method for detecting older pedestrians using SVI. We adopted transfer learning to train a model which can accurately detect older pedestrians on SVI with an accuracy of 87.1%.
Using Hong Kong as a case study, we created a dataset consisting of 72,689 street view panoramas and detected 7763 older pedestrians and 29,231 non-older pedestrians. We further visualized the distribution of detected older pedestrians and found a significant spatial discrepancy between older pedestrians and residential population of older adults. To account for this spatial discrepancy, this study proposed a novel index to assess pedestrian demand and walking environment based on the ratio of the number of pedestrians and the residential population. We also found pedestrian demand assessed with this index has a stronger correlation with the built environment compared with population-level travel survey. This novel approach can be used to assess pedestrian demand for older adults, as well as aging-friendly walking environment. © 2023 Elsevier Ltd.
Using Hong Kong as a case study, we created a dataset consisting of 72,689 street view panoramas and detected 7763 older pedestrians and 29,231 non-older pedestrians. We further visualized the distribution of detected older pedestrians and found a significant spatial discrepancy between older pedestrians and residential population of older adults. To account for this spatial discrepancy, this study proposed a novel index to assess pedestrian demand and walking environment based on the ratio of the number of pedestrians and the residential population. We also found pedestrian demand assessed with this index has a stronger correlation with the built environment compared with population-level travel survey. This novel approach can be used to assess pedestrian demand for older adults, as well as aging-friendly walking environment. © 2023 Elsevier Ltd.
| Original language | English |
|---|---|
| Article number | 102027 |
| Journal | Computers, Environment and Urban Systems |
| Volume | 105 |
| Online published | 19 Aug 2023 |
| DOIs | |
| Publication status | Published - Oct 2023 |
Research Keywords
- Walkability
- Aging friendly
- Street view imagery
- Human attributes recognition
- Transfer learning
- Walking
- Pedestrian demand
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Dive into the research topics of 'Detecting older pedestrians and aging-friendly walkability using computer vision technology and street view imagery'. Together they form a unique fingerprint.Projects
- 1 Finished
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GRF: Urban Greenness and Urban Residents’ Health: A Novel Method to Assess Street Greenery
LU, Y. (Principal Investigator / Project Coordinator), LO, S. M. (Co-Investigator) & Zimring, C. (Co-Investigator)
1/01/21 → 24/06/25
Project: Research