How Are Macro-Scale and Micro-Scale Built Environments Associated with Running Activity? The Application of Strava Data and Deep Learning in Inner London
Abstract
:1. Introduction
- (1)
- How and which macro-scale built environment attributes based on the 5Ds framework influence the running amount in Inner London?
- (2)
- How and which micro-scale streetscape features based on CV influence the running amount?
- (3)
- How do micro-scale streetscape features complement or conflict with macro-scale built environment indexes?
- (4)
- Does the running amount in Inner London (as geospatial data) have spatial dependence effects?
2. Review of the Literature
2.1. Macro-Scale Built Environment and Running
2.2. Micro-Scale Built Environment Features and Running
2.3. The Rise of Crowdsourced Data for Running
3. Data and Methods
3.1. Study Area and Analytical Framework
3.2. Data Collection and Variables Extraction
3.2.1. Dependent Variable: Running Amount
3.2.2. Macro-Scale Built Environment: 5Ds
Variables | Data Source | Data Description and Extraction | Reference | |||
---|---|---|---|---|---|---|
Control variables | ||||||
Age groups | ||||||
Pop0to17, Pop18to44, Pop45to59, Pop60to74, Pop over75 | ONS | Add up the population for each age from 0 to 90+ at the London ward level | Sarkar et al. [33] | |||
Per capita income 2019 | ONS | The amount of money of each person at the London ward level | Andersson et al. [54] | |||
Macro-scale built environments 5Ds | ||||||
Density | ||||||
Population density 2020 | ONS | Extracted at London ward level | Cervero and Kockelman [23] Li et al. [17] | |||
Job density 2019 | ONS | Extracted at London borough level | Andersson et al. [54] | |||
Building density | OSM | Building area divided by 20, 50, and 100 m buffer area | Cervero et al. [9] Rebecchi et al. [4] | |||
Diversity | ||||||
Street type | ||||||
Trunk road, primary road, secondary road, tertiary road, residential street, living street, pedestrian street, cycleway, footway, service street, track, path | OSM | Each street corresponds to a street type (0. no; 1. yes). The street networks downloaded from OSM include a total of 20 road types. According to the definition of OSM road classification [55], eight road types, such as bridleway, steps, unclassified, etc., were removed [49,56] | Ito et al. [3] Sultan et al. [56] Li et al. [49] | |||
POI entropy | OSM | Calculate Shannon–Wiener index | Yang et al. [12] | |||
Design | ||||||
Design: street amenities | ||||||
Open space area | Planning Constraints Map | Open space area divided by 20, 50, and 100 m buffer area | Cervero et al. [9] Yang et al. [12] | |||
Canopy density | Breadboard Labs and GLA | A high-resolution map (25 cm per pixel) of the tree canopy cover of London was produced from aerial imagery using CV and DL (accuracy 94.87%). We calculated the canopy density and extracted it to each sample point | Cervero et al. [9] Sarkar et al. [33] | |||
Number of intersections | OSM | 20, 50, and 100 m buffer zones | Lee et al. [57] Rebecchi et al. [4] | |||
Number of traffic lights | OSM | 20, 50, and 100 m buffer zones | Cervero et al. [9] | |||
Number of parking lots | OSM | 20, 50, and 100 m buffer zones | Rebecchi et al. [4] | |||
Maximum speed | OSM | Extract the maximum vehicle speed of each street to each sample point | Cervero et al. [9] | |||
Street length | OSM | Calculate the length of each street using GIS | Wang et al. [58] | |||
Design: safety | ||||||
Number of crimes | Metropolitan Police Service | Calculated the total number of crimes (the last 24 months) in the ward-level area | Cervero et al. [9] | |||
Number of traffic accidents | Department for Transport | The number of traffic accidents (2020) within the 20, 50, and 100 m buffer zones of each sample point were calculated | Cervero et al. [9] | |||
Number of fires | London Fire Brigade | Calculated the number of fires (the last 5 years) in each ward-level area | Schuurman et al. [5] | |||
Design: level of street pollution | ||||||
Annual mean NO2 | TFL | The dataset (2019) includes ground-level concentrations of annual mean NO2 in µg/m3 at a 20 m grid resolution. We extracted the annual mean concentration of each sample point | Larkin et al. [59] | |||
Annual mean PM2.5 | TFL | Same as above | Same as above | |||
Street noise pollution level | Department for Environment, Food and Rural Affairs | The noise pollution dataset shows the annual mean noise level from roads and rails We superimposed and extracted the values to each sample point | Schuurman et al. [5] | |||
Design: street environment attributes | ||||||
Street slope | National Aeronautics and Space Administration DEM data | Used the “slope” tool in GIS and extracted values to each sample point (12.5m accuracy). | Ito et al. [3] Cervero and Kockelman [23] | |||
Night-light intensity | LJ1-01 remote sensing satellite data | Superimposed the imaging data (from 19 June to 3 October 2018, 130 m resolution), calculated the mean input radiance value of night light, and extracted it to each sample point | Yang et al. [12] | |||
Annual mean temperature | GLA, Landsat-8 Thermal Satellite data | Recorded London’s major daytime summer hotspots (30 m resolutions). We extracted the temperature value to each sample point | Balaban and Tunçer [60] | |||
Destination accessibility | ||||||
BtA800, BtA6300 | Space syntax tool | Calculated and extracted angular-distance-based accessibility values | Sarkar at al. [33] Tang at al. [25] | |||
Distance to transit | ||||||
The public transport accessibility levels (PTALs) | TFL | A precise measurement of the density of the public transport network at any location within London (100 m accuracy). We extracted the density of the public transport network to each point | Cervero et al. [9] Ewing and Cervero [16] | |||
Micro-scale built environments | ||||||
Wall, building, tree, road, grass, sidewalk, earth, plant, car, fence, signboard, awning, streetlight, van, ashcan, railing, person, minibike, chair, sculpture, bicycle, column, bridge, water, fountain, windowpane, mountain, ceiling, booth, sofa, lamp, skyscraper, lake, bulletin board, desk, pier | 40,290 GSV images | PSPNet semantic segmentation framework using Python script | Qiu et al. [61] Dong et al. [32] | |||
Sky view factor (SVF) | 40,290 GSV images | Generate fisheye and calculate SVF values using Python script | Li et al. [62] Xia et al. [63] |
3.2.3. Micro-Scale Built Environment
- (1)
- Collection of GSVs. To obtain GSVs of the 48,286 sample points, based on the longitude and latitude of each point, a Python script was used to download the latest GSV panoramas from May to October [64] using the Google Street View Static API. Finally, we collected 360° panorama images of 40,290 sample points along streets with a size of 2048 × 1024 pixels.
- (2)
- Semantic segmentation. The pixels of physical features of the panoramas were extracted using PSPNet and model training based on the ADE20K dataset, which is tailored for semantic urban scene understanding [65]. Moreover, PSPNet could accurately parse the scenes with complicated elements and has been used by many relevant urban studies [61,66]. The prediction accuracy of PSPNet in this study was 93.4%.
- (3)
- Calculate the sky view factor. SVF is an important indicator to evaluate the openness of streets, which reflects the architectural form and the thermal comfort of the micro-scale street building environment along the street [63]. It can quantify the level of enclosure of street canyons and can be calculated as the ratio of the visible sky area to the total sky area at one point on a street (from 0 to 1), where 1 indicates an entirely open area and 0 means a completely covered space [62]. The method developed by Xia et al. [63] can generate fisheye (hemispherical) images to quantify street-level SVF values based on the DL model. In this study, we wrote a Python script to estimate the sky area using the upper part of the panoramic images [65] (Figure 5). Next, SVF values were calculated using Equation (1), which has also been applied and proven to be effective by Cao et al. [69].
3.2.4. Control Variables
3.3. Correlation Analysis and OLS Analysis
- OLS Model1 Running amount (Y)~Control variables
- OLS Model2 Running amount (Y)~Control variables + Macro-scale 5Ds
- OLS Model3 Running amount (Y)~Control variables + Micro-scale
- OLS Model4 Running amount (Y)~Control variables + Macro-scale 5Ds + Micro-scale
3.4. Spatial Dependence Test and the Spatial Model
4. Results
4.1. Descriptive Statistics
4.2. Correlation Analysis
4.3. OLS Results and the Relative Importance of Variable Groups
4.4. Moran’s I Test and Spatial Model Results
5. Discussion
5.1. Research Findings
- (1)
- For the density dimension, population density and building density did not show a correlation with the running amount, while job density indicated a negative relationship with running. In this respect, Ettema [11] found that high density did not seem to affect running participation. Places with a higher population and building density were often more urbanized and closer to downtown [10]. Although high density stimulates walking, it likely reduces the attractiveness of running because it causes many interactions with other road users and does not allow runners to maintain their momentum. In addition, the areas with higher job density tend to be central business districts (CBD), office spaces, and downtown areas in Inner London. These areas tend to be highly commercial and artificial, which may not be ideal for runners [10].
- (2)
- For the diversity dimension, running activity occurred more frequently on trunk, primary, secondary, and tertiary roads, cycleways, and footways. This might be because trunk, primary, secondary, and tertiary roads tend to have strong connectivity, complete infrastructure, and wider street space. Cycleways and footways tend to have a more comfortable atmosphere for physical activity. On the contrary, runners are less likely to choose tracks (often rough with unpaved surfaces, for mostly agricultural or forestry uses), paths (for non-specific or shared use), pedestrian streets (used mainly for pedestrians in shopping and some residential areas), and service streets (for access roads to, or within, an industrial estate, campsite, business park, car park, alleys, etc.) for their running activities compared to other road types (Figure 10). The possible reasons might be that unpaved surfaces, less wide paths, and busy streets with many pedestrians or heavy traffic volume are proven to be the features that have negative impacts on running satisfaction or frequency [10,11,13]. This is also in line with the results of [71], which reported that a comfortable running surface was important for runners and had a positive effect.
- (3)
- For the design dimension, the factors that showed positive impacts on running and promoted running hot spots were close to urban open spaces, relatively long street segments, and higher safety. Many studies have provided similar results [6,10,11,27]. For instance, Shipway and Holloway [27] showed that runners preferred green, open, and natural running environments.
- (4)
- For the destination accessibility dimension, in sDNA analysis with a radius of 800 m (Figure 11a), the downtown area in the center of Inner London and some street networks in the northeast region have good accessibility. In sDNA analysis with a radius of 6300 m, important highways and main streets were identified to be highly accessible (Figure 11b). The SAC results showed that both BTA800 and BTA6300 were significantly positively correlated with running, suggesting that streets with higher accessibility were more likely to attract runners. To our knowledge, this is the first study to use spatial syntax to measure the association between running activity and street accessibility. Previous studies have reported that streets with high accessibility promote walking [33]. The results of this study indicate that streets with high accessibility also promote running.
- (5)
- For the distance to transit dimension, PTALs showed a negative correlation with running frequency; that is, runners were less likely to pass public transport service stations in Inner London. This is contrary to previous studies, which indicated that more public transport nodes and transportation facilities could promote running [6,32]. Inner London is a densely populated metropolis with dense and developed traffic. Better access to public transportation could indicate intense urbanization. Therefore, it is logical to assume that runners are more willing to stay away from heavy traffic areas. In addition, Ettema [11] regarded running as an activity similar to recreational (leisure) walking, and in this sense, minimizing the distance to the transportation facilities is not the goal of recreational walking or running. Running may be more of a pure form of exercise and physical activity, which is different from walking or cycling that often entail transferring traffic to other destinations.
5.2. Practical Implications
5.3. Limitations
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Variables | 20 m Buffer | 50 m Buffer | 100 m Buffer | N | |||
---|---|---|---|---|---|---|---|
Mean (S.D.) | Mean (S.D.) | Mean (S.D.) | |||||
Dependent variable | |||||||
Running amount | 78.736 (65.165) | 40,290 | |||||
Control variables | |||||||
Age groups | |||||||
Pop0to17 | 3258.119 (1097.110) | 40,290 | |||||
Pop18to44 | 7345.544 (3118.943) | 40,290 | |||||
Pop45to59 | 2685.136 (624.544) | 40,290 | |||||
Pop60to74 | 1451.455 (313.130) | 40,290 | |||||
Pop over75 | 652.967 (199.145) | 40,290 | |||||
Per capita income 2019 | 35,659.353 (21754.988) | 40,290 | |||||
Macro-scale built environments 5Ds | |||||||
Density | |||||||
Population density 2020 | 11,064.400 (5345.130) | 40,290 | |||||
Job density 2019 | 2.172 (10.041) | 40,290 | |||||
Building density | 0.152 (0.165) | 0.188 (0.156) | 0.193 (0.143) | 40,290 | |||
Diversity | |||||||
Street type | |||||||
Trunk road | (0. no; 1. yes) | 1825 | |||||
Primary road | (0. no; 1. yes) | 2172 | |||||
Secondary road | (0. no; 1. yes) | 1141 | |||||
Tertiary road | (0. no; 1. yes) | 2546 | |||||
Residential street | (0. no; 1. yes) | 18,192 | |||||
Living street | (0. no; 1. yes) | 101 | |||||
Pedestrian street | (0. no; 1. yes) | 1032 | |||||
Cycleway | (0. no; 1. yes) | 1411 | |||||
Footway | (0. no; 1. yes) | 8287 | |||||
Service street | (0. no; 1. yes) | 3023 | |||||
Track | (0. no; 1. yes) | 85 | |||||
Path | (0. no; 1. yes) | 475 | |||||
POI entropy | 0.899 (0.897) | 40,290 | |||||
Design | |||||||
Design: street amenities | |||||||
Open space area | 147.831 (345.982) | 977.392 (2017.663) | 4148.766 (7474.492) | 40,290 | |||
Canopy density | 16.906 (11.340) | ||||||
Number of intersections | 0.141 (0.492) | 0.538 (1.194) | 1.754 (2.618) | 40,290 | |||
Number of traffic lights | 0.051 (0.313) | 0.225 (0.858) | 0.742 (1.831) | 40,290 | |||
Number of parking lots | 0.001(0.033) | 0.008(0.099) | 0.033(0.219) | 40,290 | |||
Maximum speed | 21.921 (17.978) | 40,290 | |||||
Street length | 0.321 (0.243) | 40,290 | |||||
Design: safety | |||||||
Number of crimes | 3346.523 (3164.750) | 40,290 | |||||
Number of traffic accidents | 0.090 (0.387) | 0.339 (0.895) | 1.104 (1.919) | 40,290 | |||
Number of fires | 632.301 (158.028) | 40,290 | |||||
Design: level of street pollution | |||||||
Annual mean NO2 | 33.580 (9.184) | 40,290 | |||||
Annual mean PM2.5 | 11.658 (1.502) | 40,290 | |||||
Street noise pollution level | 3.117(1.768) | 40,290 | |||||
Design: street environment attributes | |||||||
Street slope | 3.045 (2.377) | 40,290 | |||||
Night-light intensity | 0.001 (0.002) | 40,290 | |||||
Annual mean temperature | 32.675 (1.550) | 40,290 | |||||
Destination accessibility | |||||||
BtA800 | 3582.961 (7723.815) | 40,290 | |||||
BtA6300 | 2,530,509.635 (7,744,852.284) | 40,290 | |||||
Distance to transit | |||||||
PTALs | 20.550 (19.088) | 40,290 | |||||
Micro-scale built environments | |||||||
Pixel ratios of wall | 0.030 (0.054) | 40,290 | |||||
Pixel ratios of building | 0.257 (0.157) | 40,290 | |||||
Pixel ratios of tree | 0.163 (0.125) | 40,290 | |||||
Pixel ratios of road | 0.157 (0.071) | 40,290 | |||||
Pixel ratios of grass | 0.022 (0.056) | 40,290 | |||||
Pixel ratios of sidewalk | 0.078 (0.049) | 40,290 | |||||
Pixel ratios of earth | 0.005 (0.023) | 40,290 | |||||
Pixel ratios of plant | 0.029 (0.039) | 40,290 | |||||
Pixel ratios of car | 0.055 (0.049) | 40,290 | |||||
Pixel ratios of fence | 0.017 (0.028) | 40,290 | |||||
Pixel ratios of signboard | 0.003 (0.005) | 40,290 | |||||
Pixel ratios of awning | 0.000 (0.002) | 40,290 | |||||
Pixel ratios of streetlight | 0.001 (0.001) | 40,290 | |||||
Pixel ratios of van | 0.003 (0.009) | 40,290 | |||||
Pixel ratios of ashcan | 0.002 (0.004) | 40,290 | |||||
Pixel ratios of railing | 0.004 (0.012) | 40,290 | |||||
Pixel ratios of person | 0.002 (0.007) | 40,290 | |||||
Pixel ratios of minibike | 0.000 (0.002) | 40,290 | |||||
Pixel ratios of chair | 0.000 (0.001) | 40,290 | |||||
Pixel ratios of sculpture | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of bicycle | 0.000 (0.002) | 40,290 | |||||
Pixel ratios of column | 0.000 (0.002) | 40,290 | |||||
Pixel ratios of bridge | 0.000 (0.005) | 40,290 | |||||
Pixel ratios of fountain | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of windowpane | 0.000 (0.002) | 40,290 | |||||
Pixel ratios of mountain | 0.000 (0.001) | 40,290 | |||||
Pixel ratios of water | 0.001 (0.009) | 40,290 | |||||
Pixel ratios of ceiling | 0.001 (0.016) | 40,290 | |||||
Pixel ratios of booth | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of sofa | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of lamp | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of skyscraper | 0.000 (0.001) | 40,290 | |||||
Pixel ratios of lake | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of bulletin board | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of desk | 0.000 (0.000) | 40,290 | |||||
Pixel ratios of pier | 0.000 (0.000) | 40,290 | |||||
SVF | 0.642 (0.222) | 40,290 |
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OLS Diagnosis | Control Variables | Macro-Scale 5Ds | Micro-Scale | ||
---|---|---|---|---|---|
Buffer zone | - | 20 m | 50 m | 100 m | - |
R2 | 0.014 | 0.366 | 0.372 | 0.374 | 0.146 |
Adjusted R2 | 0.013 | 0.365 | 0.372 | 0.373 | 0.146 |
F-statistic (sig.) | 110.341 *** | 748.906 *** | 770.332 *** | 774.241 *** | 255.843 *** |
Variables | OLS Model 1 | OLS Model 2 | OLS Model 3 | ||||||
---|---|---|---|---|---|---|---|---|---|
Coef. (Std. Dev.) | β | Coef. (Std. Dev.) | β | Coef. (Std. Dev.) | β | ||||
Control variables | |||||||||
Age groups | |||||||||
Pop0to17 | −12.521 *** (0.573) | −0.192 | −14.097 *** (0.532) | −0.216 | −10.833 *** (0.548) | −0.166 | |||
Pop18to44 | 2.186 *** (0.410) | 0.034 | 3.475 *** (0.371) | 0.053 | 1.395 *** (0.392) | 0.021 | |||
Pop45to59 | 7.162 *** (0.607) | 0.110 | 5.798 *** (0.524) | 0.089 | 5.512 *** (0.569) | 0.085 | |||
Pop over75 | 0.520 (0.376) | 0.008 | 0.317 (0.321) | 0.005 | −1.080 *** (0.353) | −0.017 | |||
Per capita income 2019 | −0.251 (0.397) | −0.004 | −6.269 *** (0.626) | −0.096 | −0.667 * (0.382) | −0.010 | |||
Macro-scale built environments 5Ds | |||||||||
Density | |||||||||
Population density 2020 | −3.016 *** (0.306) | −0.046 | |||||||
Job density 2019 | 4.948 *** (0.505) | 0.076 | |||||||
Building density | −5.329 *** (0.371) | −0.082 | |||||||
Diversity | |||||||||
Street type | |||||||||
Trunk road | 2.842 *** (0.397) | 0.044 | |||||||
Primary road | 12.004 *** (0.348) | 0.184 | |||||||
Secondary road | 10.910 *** (0.271) | 0.167 | |||||||
Tertiary road | 13.562 *** (0.272) | 0.208 | |||||||
Pedestrian street | −0.575 * (0.323) | −0.009 | |||||||
Cycleway | 6.473 *** (0.348) | 0.099 | |||||||
Footway | −1.207 ** (0.549) | −0.019 | |||||||
Service street | −13.236 *** (0.379) | −0.203 | |||||||
Track | −3.013 *** (0.261) | −0.046 | |||||||
Path | −2.452 *** (0.289) | −0.038 | |||||||
POI entropy | 3.068 *** (0.350) | 0.047 | |||||||
Design | |||||||||
Design: street amenities | |||||||||
Open space area | 12.707 *** (0.341) | 0.195 | |||||||
Canopy density | −2.580 *** (0.308) | −0.040 | |||||||
Number of intersections | 2.878 *** (0.356) | 0.044 | |||||||
Number of traffic lights | 0.675 * (0.371) | 0.010 | |||||||
Number of parking lots | −1.401 *** (0.261) | −0.021 | |||||||
Maximum speed | −12.965 *** (0.637) | −0.199 | |||||||
Street length | 8.372 *** (0.274) | 0.128 | |||||||
Design: safety | |||||||||
Number of crimes | −3.966 *** (0.357) | −0.061 | |||||||
Number of traffic accidents | 2.094 *** (0.320) | 0.032 | |||||||
Number of fires | 0.016 (0.354) | 0.000 | |||||||
Design: level of street pollution | |||||||||
Annual mean PM2.5 | −0.905 ** (0.404) | −0.014 | |||||||
Street noise pollution level | 6.765 *** (0.420) | 0.104 | |||||||
Design: street environment attributes | |||||||||
Street slope | 0.589 ** (0.265) | 0.009 | |||||||
Annual mean temperature | −4.698 *** (0.327) | −0.072 | |||||||
Destination accessibility | |||||||||
BtA800 | 3.708 *** (0.296) | 0.057 | |||||||
BtA6300 | 5.059 *** (0.310) | 0.078 | |||||||
Distance to transit | |||||||||
PTALs | −2.658 *** (0.393) | −0.041 | |||||||
Micro-scale built environments | |||||||||
Pixel ratios of wall | 2.819 *** (0.340) | 0.043 | |||||||
Pixel ratios of tree | 15.234 *** (0.394) | 0.234 | |||||||
Pixel ratios of road | 7.727 *** (0.397) | 0.119 | |||||||
Pixel ratios of grass | 7.832 *** (0.424) | 0.120 | |||||||
Pixel ratios of sidewalk | 8.765 *** (0.401) | 0.135 | |||||||
Pixel ratios of earth | 3.914 *** (0.334) | 0.060 | |||||||
Pixel ratios of plant | −1.872 *** (0.334) | −0.029 | |||||||
Pixel ratios of car | −2.253 *** (0.432) | −0.035 | |||||||
Pixel ratios of fence | −4.431 *** (0.326) | −0.068 | |||||||
Pixel ratios of signboard | 1.839 *** (0.310) | 0.028 | |||||||
Pixel ratios of awning | 1.190 *** (0.305) | 0.018 | |||||||
Pixel ratios of streetlight | 2.363 *** (0.310) | 0.036 | |||||||
Pixel ratios of ashcan | −0.339 (0.313) | −0.005 | |||||||
Pixel ratios of railing | 2.893 *** (0.310) | 0.044 | |||||||
Pixel ratios of person | 4.597 *** (0.318) | 0.071 | |||||||
Pixel ratios of minibike | −0.039 (0.301) | −0.001 | |||||||
Pixel ratios of sculpture | −0.262 (0.305) | −0.004 | |||||||
Pixel ratios of bridge | −0.552 * (0.305) | −0.008 | |||||||
Pixel ratios of fountain | −0.011 (0.305) | 0.000 | |||||||
Pixel ratios of windowpane | 0.253 (0.303) | 0.004 | |||||||
Pixel ratios of mountain | 0.377 (0.299) | 0.006 | |||||||
Pixel ratios of water | 8.131 *** (0.317) | 0.125 | |||||||
Pixel ratios of booth | 1.031 *** (0.300) | 0.016 | |||||||
Pixel ratios of skyscraper | 1.297 *** (0.302) | 0.020 | |||||||
Pixel ratios of lake | 0.231 (0.299) | 0.004 | |||||||
Pixel ratios of pier | 1.882 *** (0.307) | 0.029 | |||||||
SVF | 7.600 *** (0.390) | 0.117 | |||||||
(Constant) | 78.736 *** (0.322) | 78.736 *** (0.255) | 78.736 *** (0.298) | ||||||
R2 | 0.014 | 0.386 | 0.155 | ||||||
Adjusted R2 | 0.013 | 0.385 | 0.155 | ||||||
F-statistic (sig.) | 110.341 *** | 701.841 *** | 231.589 *** |
Variables | OLS Model4 | SAC Model | |||||||
---|---|---|---|---|---|---|---|---|---|
Coef. (Std. Dev.) | β | Sig. | VIF | Coef. (Std. Dev.) | Sig. | ||||
Dependent variable | |||||||||
Running amount | |||||||||
Control variables | |||||||||
Age groups | |||||||||
Pop0to17 | −13.632 *** (0.526) | −0.209 | 0.000 | 4.444 | 0.089 (0.265) | 0.737 | |||
Pop18to44 | 3.379 *** (0.367) | 0.052 | 0.000 | 2.169 | −0.247 (0.181) | 0.174 | |||
Pop45to59 | 6.098 *** (0.517) | 0.094 | 0.000 | 4.303 | −0.232 (0.254) | 0.361 | |||
Pop over75 | 0.083 (0.316) | 0.001 | 0.792 | 1.608 | 0.418 *** (0.154) | 0.007 | |||
Per capita income2019 | −7.292 *** (0.622) | −0.112 | 0.000 | 6.230 | −0.743 ** (0.308) | 0.016 | |||
Macro-scale built environments 5Ds | |||||||||
Density | |||||||||
Population density2020 | −3.418 *** (0.306) | −0.052 | 0.000 | 1.502 | 0.211 (0.157) | 0.179 | |||
Job density2019 | 5.650 *** (0.503) | 0.087 | 0.000 | 4.070 | −0.968 *** (0.252) | 0.000 | |||
Building density | −4.645 *** (0.381) | −0.071 | 0.000 | 2.336 | −0.176 (0.202) | 0.383 | |||
Diversity | |||||||||
Street type | |||||||||
Trunk road | 2.885 *** (0.391) | 0.044 | 0.000 | 2.456 | 3.426 ***(0.273) | 0.000 | |||
Primary road | 11.479 *** (0.342) | 0.176 | 0.000 | 1.884 | 8.785 ***(0.245) | 0.000 | |||
Secondary road | 10.310 *** (0.268) | 0.158 | 0.000 | 1.158 | 6.683 ***(0.186) | 0.000 | |||
Tertiary road | 12.975 *** (0.269) | 0.199 | 0.000 | 1.165 | 8.439 ***(0.185) | 0.000 | |||
Pedestrian street | −2.029 *** (0.323) | −0.031 | 0.000 | 1.682 | −0.863 ***(0.215) | 0.000 | |||
Cycleway | 6.006 *** (0.344) | 0.092 | 0.000 | 1.899 | 5.155 ***(0.232) | 0.000 | |||
Footway | −1.579 *** (0.541) | −0.024 | 0.004 | 4.712 | 0.900 **(0.354) | 0.011 | |||
Service street | −12.418 *** (0.376) | −0.191 | 0.000 | 2.274 | −6.866 *** (0.254) | 0.000 | |||
Track | −2.875 *** (0.256) | −0.044 | 0.000 | 1.054 | −1.162 *** (0.177) | 0.000 | |||
Path | −2.422 *** (0.285) | −0.037 | 0.000 | 1.303 | −1.190 *** (0.193) | 0.000 | |||
POI entropy | 2.652 *** (0.348) | 0.041 | 0.000 | 1.944 | −0.536 *** (0.197) | 0.007 | |||
Design | |||||||||
Design: street amenities | |||||||||
Open space area | 12.391 *** (0.379) | 0.190 | 0.000 | 2.309 | 1.698 *** (0.212) | 0.000 | |||
Canopy density | −2.868 *** (0.313) | −0.044 | 0.000 | 1.575 | −1.061 *** (0.168) | 0.000 | |||
Number of intersections | 2.712 *** (0.351) | 0.042 | 0.000 | 1.984 | 0.689 *** (0.198) | 0.001 | |||
Number of traffic lights | 0.764 ** (0.364) | 0.012 | 0.036 | 2.137 | −0.417 ** (0.207) | 0.044 | |||
Number of parking lots | −1.249 *** (0.256) | −0.019 | 0.000 | 1.053 | −0.312 ** (0.146) | 0.032 | |||
Maximum speed | −12.174 *** (0.627) | −0.187 | 0.000 | 6.323 | −4.320 *** (0.405) | 0.000 | |||
Street length | 8.198 *** (0.271) | 0.126 | 0.000 | 1.180 | 4.395 *** (0.176) | 0.000 | |||
Design: safety | |||||||||
Number of crimes | −4.349 *** (0.356) | −0.067 | 0.000 | 2.037 | −0.689 *** (0.180) | 0.000 | |||
Number of traffic accidents | 1.809 *** (0.315) | 0.028 | 0.000 | 1.594 | 0.370 ** (0.181) | 0.040 | |||
Number of fires | −0.326 (0.350) | −0.005 | 0.350 | 1.966 | −1.018 *** (0.170) | 0.000 | |||
Design: level of street pollution | |||||||||
Annual mean PM2.5 | −0.555 (0.400) | −0.009 | 0.166 | 2.578 | −1.239 *** (0.259) | 0.000 | |||
Street noise pollution level | 6.027 *** (0.425) | 0.092 | 0.000 | 2.908 | 1.239 *** (0.267) | 0.000 | |||
Design: street environment attributes | |||||||||
Street slope | 0.568 ** (0.260) | 0.009 | 0.029 | 1.090 | 0.021 (0.169) | 0.901 | |||
Annual mean temperature | −4.106 *** (0.327) | −0.063 | 0.000 | 1.724 | 0.553 *** (0.194) | 0.004 | |||
Destination accessibility | |||||||||
BtA800 | 3.176 *** (0.292) | 0.049 | 0.000 | 1.368 | 2.866 *** (0.195) | 0.000 | |||
BtA6300 | 4.960 *** (0.303) | 0.076 | 0.000 | 1.481 | 2.861 *** (0.214) | 0.000 | |||
Distance to transit | |||||||||
PTALs | −3.158 *** (0.390) | −0.048 | 0.000 | 2.444 | −0.646 *** (0.199) | 0.001 | |||
Micro-scale built environments | |||||||||
Pixel ratios of wall | −0.182 (0.293) | −0.003 | 0.535 | 1.377 | −1.119 *** (0.187) | 0.000 | |||
Pixel ratios of tree | 4.729 *** (0.381) | 0.073 | 0.000 | 2.340 | 1.724 *** (0.242) | 0.000 | |||
Pixel ratios of road | 1.084 *** (0.348) | 0.017 | 0.002 | 1.953 | 1.300 *** (0.231) | 0.000 | |||
Pixel ratios of grass | 0.290 (0.382) | 0.004 | 0.448 | 2.352 | −0.215 (0.240) | 0.369 | |||
Pixel ratios of sidewalk | 6.183 *** (0.343) | 0.095 | 0.000 | 1.894 | 3.172 *** (0.229) | 0.000 | |||
Pixel ratios of earth | 0.646 ** (0.287) | 0.010 | 0.024 | 1.325 | 0.205 (0.180) | 0.254 | |||
Pixel ratios of plant | −1.740 *** (0.287) | −0.027 | 0.000 | 1.324 | −0.664 *** (0.192) | 0.001 | |||
Pixel ratios of car | 2.374 *** (0.372) | 0.036 | 0.000 | 2.221 | 0.507 ** (0.255) | 0.047 | |||
Pixel ratios of fence | −3.062 *** (0.276) | −0.047 | 0.000 | 1.224 | −1.264 *** (0.191) | 0.000 | |||
Pixel ratios of signboard | 0.428 (0.263) | 0.007 | 0.104 | 1.111 | 0.770 *** (0.193) | 0.000 | |||
Pixel ratios of awning | 0.337 (0.256) | 0.005 | 0.187 | 1.054 | 0.409 ** (0.184) | 0.026 | |||
Pixel ratios of streetlight | 1.699 *** (0.263) | 0.026 | 0.000 | 1.112 | 0.505 *** (0.185) | 0.006 | |||
Pixel ratios of ashcan | −0.854 *** (0.265) | −0.013 | 0.001 | 1.133 | 0.117 (0.178) | 0.512 | |||
Pixel ratios of railing | 0.798 *** (0.263) | 0.012 | 0.002 | 1.111 | 0.101 (0.177) | 0.570 | |||
Pixel ratios of person | 2.827 *** (0.278) | 0.043 | 0.000 | 1.245 | 0.945 *** (0.182) | 0.000 | |||
Pixel ratios of minibike | −0.250 (0.252) | −0.004 | 0.321 | 1.024 | −0.098 (0.191) | 0.609 | |||
Pixel ratios of sculpture | −0.005 (0.255) | 0.000 | 0.986 | 1.049 | −0.065 (0.177) | 0.712 | |||
Pixel ratios of bridge | −1.006 *** (0.257) | −0.015 | 0.000 | 1.061 | −0.574 *** (0.174) | 0.001 | |||
Pixel ratios of fountain | −0.207 (0.255) | −0.003 | 0.417 | 1.045 | −0.180 (0.186) | 0.335 | |||
Pixel ratios of windowpane | −0.081 (0.254) | −0.001 | 0.750 | 1.034 | −0.127 (0.192) | 0.509 | |||
Pixel ratios of mountain | 0.117 (0.250) | 0.002 | 0.640 | 1.006 | 0.432 ** (0.188) | 0.022 | |||
Pixel ratios of water | 6.153 *** (0.267) | 0.094 | 0.000 | 1.144 | 2.423 *** (0.178) | 0.000 | |||
Pixel ratios of booth | 0.364 (0.251) | 0.006 | 0.147 | 1.013 | 0.599 *** (0.193) | 0.002 | |||
Pixel ratios of skyscraper | 0.715 *** (0.253) | 0.011 | 0.005 | 1.028 | −0.132 (0.162) | 0.417 | |||
Pixel ratios of lake | −0.055 (0.250) | −0.001 | 0.827 | 1.009 | 0.135 (0.168) | 0.420 | |||
Pixel ratios of pier | 1.670 *** (0.257) | 0.026 | 0.000 | 1.063 | 0.214 (0.184) | 0.243 | |||
SVF | 2.021 *** (0.363) | 0.031 | 0.000 | 2.115 | 0.584 ** (0.232) | 0.012 | |||
(Constant) | 78.736 *** (0.249) | 0.000 | 3.705 *** (0.317) | 0.010 | |||||
Wy | 0.956 *** (0.004) | 0.000 | |||||||
LAMBDA | −0.707 *** (0.009) | 0.000 | |||||||
R2 | 0.411 | 0.619 | |||||||
Adjusted R2 | 0.410 | ||||||||
F-statistic (sig.) | 445.783 *** | ||||||||
Moran’s I on residuals (z-value) | 0.354 *** (119.287) | −0.001(−0.430) | |||||||
Robust Lagrange multiplier (lag) | 111.835 *** | ||||||||
Robust Lagrange multiplier (error) | 2694.828 *** |
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Jiang, H.; Dong, L.; Qiu, B. How Are Macro-Scale and Micro-Scale Built Environments Associated with Running Activity? The Application of Strava Data and Deep Learning in Inner London. ISPRS Int. J. Geo-Inf. 2022, 11, 504. https://doi.org/10.3390/ijgi11100504
Jiang H, Dong L, Qiu B. How Are Macro-Scale and Micro-Scale Built Environments Associated with Running Activity? The Application of Strava Data and Deep Learning in Inner London. ISPRS International Journal of Geo-Information. 2022; 11(10):504. https://doi.org/10.3390/ijgi11100504
Chicago/Turabian StyleJiang, Hongchao, Lin Dong, and Bing Qiu. 2022. "How Are Macro-Scale and Micro-Scale Built Environments Associated with Running Activity? The Application of Strava Data and Deep Learning in Inner London" ISPRS International Journal of Geo-Information 11, no. 10: 504. https://doi.org/10.3390/ijgi11100504
APA StyleJiang, H., Dong, L., & Qiu, B. (2022). How Are Macro-Scale and Micro-Scale Built Environments Associated with Running Activity? The Application of Strava Data and Deep Learning in Inner London. ISPRS International Journal of Geo-Information, 11(10), 504. https://doi.org/10.3390/ijgi11100504