Measuring Neighborhood Walkable Environments: A Comparison of Three Approaches
Abstract
:1. Introduction
1.1. Empirical Studies of Google Street View
1.2. Research Aim
2. Methods
2.1. Study Site Selection
2.2. Participant Training and Survey Procedure
- Local residents: To select people with a thorough understanding of the area’s environmental conditions, we selected residents who had lived in the area for three or more years for a questionnaire survey. We recruited them as they walked on the sidewalks in their neighborhoods. They were not required to make field visits. Instead, they were given a map of the area and asked to draw from their experiences in the neighborhood while completing the questionnaire.
- Field visits: We recruited participants who were walking outdoors in the two cities and who were not residents of the neighborhoods in question. The participants received 1 h of training before commencing the assessment. They were first given a map of the area and the travel route and scope of their activities were explained. To prevent discussions among the participants from influencing the results, only one person performed the assessment at a time. The participants were asked to visit every street and alley in a 500 m radius of a center point in the neighborhood. They were asked to walk at their normal walking speed (about 5.0 km/h; 3.1 mph) [20], experience the environment, and then complete the questionnaire.
- Google Street View assessment: We recruited participants by putting up recruitment posters at a university campus. Before the assessment, the participants received 2 h of training, during which they were informed about the browsing operation mode, route, scope, and browsing speed. They were asked to browse each street and alley by viewing Google Street images of the neighborhood before completing the questionnaire.
2.3. Walkability Attributes
2.4. Data Analysis
2.5. Ethical Statement
3. Results
3.1. Participant Demographics
3.2. Inter-Rater Reliability of the Walkability Categories
3.3. Inter-Rater Reliability of the Walkability Attributes
4. Discussion
- Assessing a site by using Google Street View will be adequate when looking at large-scale environmental attributes such as street connectivity (i.e., intersections and alternative paths). Employing Google Street View is an efficient and cheap way of assessing the aesthetics of a site.
- Gaining residents’ feedback is crucial for aspects such as street connectivity and traffic safety, because residents are familiar with their neighborhood environment and traffic conditions.
- Regarding the reliability of local residents and Google Street View, some detailed attributes (e.g., graffiti, abandoned houses or cars, traffic signs, and dead end streets) and some dynamic information categories (e.g., pedestrian and vehicle flow volume) were in moderate agreement; however, local residents and Google Street View were more reliable than field visits.
- When residents’ feedback is not feasible, field visits can provide correct information about the sidewalk quality and physical barriers of specific sites.
5. Limitations
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Abbreviations
ICC | intraclass correlation coefficient |
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Categories | Attributes | Levels |
---|---|---|
Street connectivity | Intersections | 1 (very few) to 5 (numerous) |
Alternative paths | 1 (very few) to 5 (numerous) | |
Social safety | Graffiti | 1 (common) to 5 (none) |
Abandoned houses or cars | 1 (common) to 5 (none) | |
Pedestrian flow volume | 1 (very few) to 5 (numerous) | |
Security of the surroundings | 1 (very unsafe) to 5 (very safe) | |
Traffic safety | Vehicle flow volume | 1 (very high) to 5 (very low) |
Road safety | 1 (unsafe) to 5 (safe) | |
Traffic signs | 1 (very insufficient) to 5 (very sufficient) | |
Aesthetics | Beautiful views in the surroundings | 1 (none) to 5 (common) |
Attractive scenery | 1 (none) to 5 (common) | |
Shop window decoration | 1 (none) to 5 (common) | |
Roadside plantings | 1 (none) to 5 (common) | |
Roadside trees | 1 (none) to 5 (common) | |
Distinctive business signs | 1 (none) to 5 (common) | |
Sidewalk quality | Sidewalk width | 1 (very insufficient) to 5 (very sufficient) |
Pavement smoothness | 1 (very coarse) to 5 (very smooth) | |
Sidewalk cleanness | 1 (very unclean) to 5 (very clean) | |
Physical barrier | Scooters occupying the sidewalk | 1 (common) to 5 (none) |
Street vendors occupying the sidewalk | 1 (common) to 5 (none) | |
Cul-de-sac | 1 (common) to 5 (none) | |
Amenities | Rain shelters | 1 (none) to 5 (common) |
Benches | 1 (none) to 5 (common) | |
Lighting | 1 (none) to 5 (common) | |
Others | Accessibility ramps | 1 (none) to 5 (common) |
Bus stops | 1 (none) to 5 (common) | |
Street signs | 1 (none) to 5 (common) |
Variable | n (%) |
---|---|
Gender | |
Male | 46 (51.1) |
Female | 44 (48.9) |
Age (years) | |
≤18 | 1 (1.1) |
19–25 | 23 (25.6) |
26–35 | 31 (34.4) |
36–45 | 4 (4.4) |
46–64 | 24 (26.7) |
≥65 | 7 (7.8) |
Categories | ICC | |
---|---|---|
Local Residents vs. Google | Field Visits vs. Google | |
Street connectivity | 0.73 d | 0.20 b |
Social safety | 0.16 a | 0.19 a |
Traffic safety | 0.76 d | 0.73 d |
Aesthetics | 0.85 e | 0.81 e |
Sidewalk quality | 0.67 d | 0.73 d |
Physical barrier | 0.68 d | 0.72 d |
Amenities | 0.53 c | 0.40 c |
Others | 0.33 b | 0.42 c |
Categories | Attributes | ICC | |
---|---|---|---|
Local Residents vs. Google | Field Visits vs. Google | ||
Street connectivity | Intersections | 0.73 d | 0.39 b |
Alternative paths | 0.87 e | 0.82 e | |
Social safety | Graffiti | 0.53 c | 0.24 b |
Abandoned houses or cars | 0.47 c | 0.05 a | |
Pedestrian flow volume | 0.57 c | 0.21 b | |
Security of the surroundings | 0.22 b | 0.15 a | |
Traffic safety | Vehicle flow volume | 0.50 c | 0.11 a |
Road safety | 0.78 d | 0.63 d | |
Traffic signs | 0.57 c | 0.45 c | |
Aesthetics | Beautiful views in the surroundings | 0.87 e | 0.82 e |
Attractive scenery | 0.87 e | 0.88 e | |
Shop window decoration | 0.32 b | 0.33 b | |
Roadside plantings | 0.85 e | 0.79 d | |
Roadside trees | 0.87 e | 0.93 e | |
Distinctive business signs | 0.25 b | 0.39 b | |
Sidewalk quality | Sidewalk width | 0.78 d | 0.83 e |
Pavement smoothness | 0.83 e | 0.78 d | |
Sidewalk cleanness | 0.89 e | 0.88 e | |
Physical barrier | Scooters occupying the sidewalk | 0.83 e | 0.68 d |
Street vendors occupying the sidewalk | 0.44 c | 0.24 b | |
Cul-de-sac | 0.52 c | 0.80 e | |
Amenities | Rain shelters | 0.65 d | 0.80 e |
Benches | 0.86 e | 0.60 d | |
Lighting | 0.14 a | 0.36 b | |
Others | Accessibility ramps | 0.38 b | 0.40 c |
Bus stops | 0.38 b | 0.29 b | |
Street signs | 0.78 d | 0.63 d |
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Chiang, Y.-C.; Sullivan, W.; Larsen, L. Measuring Neighborhood Walkable Environments: A Comparison of Three Approaches. Int. J. Environ. Res. Public Health 2017, 14, 593. https://doi.org/10.3390/ijerph14060593
Chiang Y-C, Sullivan W, Larsen L. Measuring Neighborhood Walkable Environments: A Comparison of Three Approaches. International Journal of Environmental Research and Public Health. 2017; 14(6):593. https://doi.org/10.3390/ijerph14060593
Chicago/Turabian StyleChiang, Yen-Cheng, William Sullivan, and Linda Larsen. 2017. "Measuring Neighborhood Walkable Environments: A Comparison of Three Approaches" International Journal of Environmental Research and Public Health 14, no. 6: 593. https://doi.org/10.3390/ijerph14060593
APA StyleChiang, Y. -C., Sullivan, W., & Larsen, L. (2017). Measuring Neighborhood Walkable Environments: A Comparison of Three Approaches. International Journal of Environmental Research and Public Health, 14(6), 593. https://doi.org/10.3390/ijerph14060593