“Is What We See Always Real?” A Comparative Study of Two-Dimensional and Three-Dimensional Urban Green Spaces: The Case of Shenzhen’s Central District
Abstract
:1. Introduction
2. Study Area and Data
2.1. Overview of the Study Area
2.2. Data Source and Data Preprocessing
2.2.1. Various Data Sources and Related Software Versions
2.2.2. Administrative Divisions and Road Data
2.2.3. NDVI and Street View Image Data
3. Research Methodology
3.1. Analytical Framework
3.2. NDVI Calculation
3.3. GVI Calculation
3.3.1. GVI Recognition Based on Image Semantic Segmentation Neural Network
3.3.2. Minimizing Deformation Error
3.3.3. Reasons for the Null Value of GVI Data
4. Results and Discussion
4.1. Overall Characteristics of Street Green Spaces
4.1.1. In Three-Dimensional Space, the Road Greening Levels in Shenzhen’s Nanshan, Futian, and Luohu Districts Are Overall High
4.1.2. In Two-Dimensional Space, Urban and Forest Parks Form the Backbone, with Road Greening Connecting to Form a Green Ecological Network
4.2. Correlation Analysis between Two-Dimensional and Three-Dimensional Street Green Space
4.3. Analysis of the Causes of Differences
4.3.1. Areas with High NDVI and GVI and Their Main Causes
4.3.2. Areas with Low NDVI and GVI and Their Main Causes
4.3.3. Areas with High NDVI but Low GVI and Their Main Causes
4.3.4. Areas with Low NDVI and High GVI and Their Main Causes
4.4. Discussion
5. Conclusions
5.1. Main Findings
5.1.1. Shenzhen’s Core Area Has Good Green Infrastructure Construction
5.1.2. Moderate Correlation between 2D and 3D Greening Data
5.1.3. Four Classification Relationships between 2D and 3D Greening Data
5.1.4. The Limitation of the Sampler’s Perspective Is the Main Cause of Differences between 2D and 3D Green Space Data
5.1.5. Using GVI as a Substitute for NDVI Null Values Can Reduce Greening Assessment Errors
5.2. Limitations
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Climate Elements | Natural Vegetation Types | Land Use Information | |||
---|---|---|---|---|---|
Average temperature (°C) | 23.3 | Percentage of subtropical and tropical evergreen broad-leaved and deciduous broad-leaved shrubs (%) | 64.59% | Cultivated land (%) | 5.95% |
Relative humidity (%) | 74 | Percentage of tropical mangroves (%) | 0.78% | Forest land (%) | 29.14% |
Precipitation (mm) | 1932.9 | Percentage of cultivated vegetation (artificial turf, artificial forests) (%) | 25.29% | Grassland (%) | 1.23% |
Sunshine hours (h) | 1853.0 | Percentage of subtropical coniferous forests (%) | 8.56% | Water area (%) | 3.95% |
High temperature days (d) | 4.4 | Percentage of subtropical and tropical grasses (%) | 0.78% | Urban construction land (%) | 59.73% |
Land Type Ratio | Shenzhen | Nanshan | Futian | Luohu |
---|---|---|---|---|
Arable land (%) | 5.95 | 8.77 | 0.76 | 4.73 |
Woodland (%) | 29.14 | 24.63 | 18.06 | 49.10 |
Grassland (%) | 1.23 | 1.86 | 0.24 | 1.03 |
Waters (%) | 3.95 | 3.05 | 4.21 | 5.64 |
Urban construction land (%) | 59.73 | 61.70 | 76.73 | 39.50 |
No. | Data Name | Data Source |
---|---|---|
1 | Population data | Shenzhen Statistical Yearbook 2023 [27] |
2 | GDP data | Shenzhen Statistical Yearbook 2023 [27] |
3 | Urbanization rate data | Shenzhen Statistics Bureau |
4 | Climate element information | Shenzhen Statistics Bureau |
5 | Natural vegetation type | “1:1,000,000” China Vegetation Atlas |
6 | Land use information | Chinese Academy of Sciences Resource and Environmental Science Data Center |
7 | Administrative division | Open Street Map |
8 | Road information | Open Street Map |
9 | Panoramic static image | Baidu Map Open Platform |
10 | Normalized difference vegetation index | Google Earth Engine |
Number | Semantic Segmentation Categories | 10 | Terrain |
---|---|---|---|
1 | road | 11 | sky |
2 | sidewalk | 12 | person |
3 | building | 13 | rider |
4 | wall | 14 | car |
5 | fence | 15 | truck |
6 | pole | 16 | bus |
7 | traffic light | 17 | train |
8 | traffic sign | 18 | motorcycle |
9 | vegetation | 19 | bicycle |
District | Number of Sampling Points | GVI | ||||
---|---|---|---|---|---|---|
Mean | Median | Std | Max | Min | ||
Nanshan District | 5427 | 26.052504 | 20.763597 | 20.210768 | 95.885968 | 0 |
Futian District | 4283 | 25.815859 | 20.475361 | 19.893862 | 87.554387 | 0 |
Luohu District | 2544 | 26.505979 | 20.303072 | 22.538585 | 93.763146 | 0 |
GVI Is Higher | GVI Is Lower | |
---|---|---|
NDVI is higher | 495 | 133 |
NDVI is lower | 179 | 2327 |
Semantic Segmentation Categories | Correlation Value with Vegetation |
---|---|
Road | 0.227 |
Building (wall + building) | −0.418 |
Sky | 0.285 |
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Jing, X.; Li, Z.; Chen, H.; Zhang, C. “Is What We See Always Real?” A Comparative Study of Two-Dimensional and Three-Dimensional Urban Green Spaces: The Case of Shenzhen’s Central District. Forests 2024, 15, 983. https://doi.org/10.3390/f15060983
Jing X, Li Z, Chen H, Zhang C. “Is What We See Always Real?” A Comparative Study of Two-Dimensional and Three-Dimensional Urban Green Spaces: The Case of Shenzhen’s Central District. Forests. 2024; 15(6):983. https://doi.org/10.3390/f15060983
Chicago/Turabian StyleJing, Xiang, Zheng Li, Hongsheng Chen, and Chuan Zhang. 2024. "“Is What We See Always Real?” A Comparative Study of Two-Dimensional and Three-Dimensional Urban Green Spaces: The Case of Shenzhen’s Central District" Forests 15, no. 6: 983. https://doi.org/10.3390/f15060983
APA StyleJing, X., Li, Z., Chen, H., & Zhang, C. (2024). “Is What We See Always Real?” A Comparative Study of Two-Dimensional and Three-Dimensional Urban Green Spaces: The Case of Shenzhen’s Central District. Forests, 15(6), 983. https://doi.org/10.3390/f15060983