Extraction and Analysis of Blue Steel Roofs Information Based on CNN Using Gaofen-2 Imageries
Abstract
:1. Introduction
2. Study Area and Data
2.1. Study Area
2.2. Data and Preprocessing
3. Materials and Methods
3.1. DeeplabV3+ Architecture
3.2. Extraction of Blue Steel Roofs Information
3.2.1. Training Sample Preparation and Model Training
3.2.2. Evaluation
3.3. Spatial Distribution Analysis of Blue Steel Roofs
3.3.1. Geographic Concentration Index
3.3.2. Distribution Homogeneity
3.3.3. Barycenter Model
3.4. Analysis of Influencing Factors of Blue Steel Roofs Area
4. Results
4.1. Accuracy Evaluation
4.2. Spatial Distribution of Blue Steel Roofs
4.3. Area of Blue Steel Roofs
4.4. Correlation with Social Economic Data
5. Discussion
6. Conclusions
- (1)
- The DeepLabV3+ deep learning model performed well in extracting the blue steel roofs information in Nanhai District (Lishui, Dali, Shishan, and Guicheng) of Foshan City. The overall accuracy was 92%, which is better than the maximum likelihood classification methods.
- (2)
- The distribution of blue steel roofs was not even across the whole study area, indicating regional clustering of the factories.
- (3)
- The blue steel roofs areas were positively correlated with economic factors, such as GVIOADS, RLF, and ICECADS, proving that it might serve as an indicator for inefficient industrial areas in regional planning and its environmental and socio-economic significance.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Name | Area (km2) | RLF | GVIOADS (Billion Yuan) | ICECADS (Tons) | Population | GVIO (Billion Yuan) |
---|---|---|---|---|---|---|
Guicheng | 1.54 | 76,425 | 30.56 | 62,022 | 262,646 | 43.46 |
Shishan | 10.02 | 198,562 | 323.23 | 1,016,390 | 297,423 | 341.40 |
Dali | 3.39 | 113,299 | 54.63 | 182,612 | 263,734 | 60.08 |
Lishui | 2.89 | 72,821 | 84.61 | 133,177 | 138,284 | 90.81 |
Parameter | Value |
---|---|
Base learning rate | 0.005 |
Batch size | 4 |
Weight decay | 0.0002 |
Max iteration times | 10,000 |
Correlation Degree | Complete Correlation | High Correlation | Significant Correlation | Low Correlation | Micro Correlation | No Correlation |
---|---|---|---|---|---|---|
1 | 0.8~1 | 0.5~0.8 | 0.3~0.5 | 0.3~0 | 0 |
Name | Geographic Concentration Index | Uniformity | Distribution Type |
---|---|---|---|
Dali | 4.37 | 0.73 | Uniform |
Guicheng | 2.20 | 0.86 | Uniform |
Lishui | 3.84 | 0.78 | Uniform |
Shishan | 9.36 | 0.41 | Generally uniform |
Factor | Pearson | p-Value |
---|---|---|
GVIOADS | 0.988 * | 0.012 |
RLF | 0.971 * | 0.029 |
ICECADS | 0.995 ** | 0.005 |
Population | 0.487 | 0.513 |
GVIO | 0.985 * | 0.015 |
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Sun, M.; Deng, Y.; Li, M.; Jiang, H.; Huang, H.; Liao, W.; Liu, Y.; Yang, J.; Li, Y. Extraction and Analysis of Blue Steel Roofs Information Based on CNN Using Gaofen-2 Imageries. Sensors 2020, 20, 4655. https://doi.org/10.3390/s20164655
Sun M, Deng Y, Li M, Jiang H, Huang H, Liao W, Liu Y, Yang J, Li Y. Extraction and Analysis of Blue Steel Roofs Information Based on CNN Using Gaofen-2 Imageries. Sensors. 2020; 20(16):4655. https://doi.org/10.3390/s20164655
Chicago/Turabian StyleSun, Meiwei, Yingbin Deng, Miao Li, Hao Jiang, Haoling Huang, Wenyue Liao, Yangxiaoyue Liu, Ji Yang, and Yong Li. 2020. "Extraction and Analysis of Blue Steel Roofs Information Based on CNN Using Gaofen-2 Imageries" Sensors 20, no. 16: 4655. https://doi.org/10.3390/s20164655
APA StyleSun, M., Deng, Y., Li, M., Jiang, H., Huang, H., Liao, W., Liu, Y., Yang, J., & Li, Y. (2020). Extraction and Analysis of Blue Steel Roofs Information Based on CNN Using Gaofen-2 Imageries. Sensors, 20(16), 4655. https://doi.org/10.3390/s20164655