Remote Sensing Image Characteristics and Typical Area Analysis of Taiyuan Xishan Ecological Restoration Area
Abstract
:1. Introduction
- We focus on how to use the RGB image data to obtain vegetation cover information.
- We use the RGB remote sensing image data to construct new vegetation coverage extraction models that are based on the cell dichotomy method by combining different indexes.
- A new RGB vegetation coverage CIVE calculation model is innovatively proposed for using the RGB image data to quickly and accurately extract vegetation coverage information.
- We selected vegetation coverage as the evaluation index of ecological restoration effect, and a new CIVE model for calculating RGB vegetation coverage is proposed.
2. Overview of the Study Area and Data Selection
2.1. Overview of the Study Area
2.2. Data Picking
3. Research Methods
3.1. Visible Light Vegetation Index
3.2. Cell Dichotomy
3.3. Vegetation Cover Extraction Model
3.4. Vegetation Coverage Extraction from RGB Images
3.5. Accuracy Evaluation of Vegetation Cover
4. Analysis of the Results
4.1. Monitor Classification Results and Evaluations
4.2. Extraction Results and Analysis of Vegetation Cover for Different Models
4.3. Vegetation Cover Extraction Results of CIVE Model
4.4. Analysis of Vegetation Cover Changes
5. Typical Area Analysis
5.1. Gangue Pile Treatment Area
5.2. Vegetation Degradation Restoration Area
5.3. Sediment Tank Renovation Area
5.4. Amusement Park Landscape Regeneration Area
5.5. Bare Land Regreening Area
5.6. Industrial Land Redevelopment Area
6. Conclusions and Future Work
- The ecological restoration and governance of mining areas should adhere to the principle of taking into account the development of mineral resources and ecological environmental protection. Moreover, efforts should be made to strengthen the ecological restoration measures in the process of coal mining, adopt measures of “mining and treatment,” and practice the development idea that “green water and green mountains are gold and silver mountains”.
- By studying the change in vegetation coverage in the Taiyuan Xishan Ecological Restoration Area, the quality of the vegetation in the Taiyuan Xishan Ecological Restoration Area is constantly improving, and the vegetation restoration trend is also significant. In essence, in fact, this shows that through government intervention and ecological restoration intervention, the vegetation coverage in this area has improved significantly.
- Through the long-term dynamic monitoring of the vegetation coverage in the Xishan ecological restoration area of Taiyuan, it can be seen that the ecological restoration governance has multiple treatments in the same area. Therefore, the possibility of obtaining ideal results after one treatment is quite low, and it is necessary to continuously explore and investigate the governance model suitable for Xishan.
- According to the relevant paper data and remote sensing image characteristics, the Taiyuan Xishan Ecological Restoration Area is divided into six typical areas, including: (i) the coal gangue pile treatment area; (ii) the vegetation degradation restoration area; (iii) the sediment pond transformation area; (iv) the amusement garden landscape regeneration area; (v) the bare land regreening area; and (vi) the industrial land reconstruction area. While restoring the ecological environment, it has produced certain economic and social benefits, which can provide a reference for subsequent ecological restoration work.
- When building on residential and commercial land in the Taiyuan Xishan Ecological Restoration Zone, attention should be paid to protecting the surrounding vegetation to avoid vegetation degradation. Furthermore, at the same time, it is also necessary to increase the greening of vegetation around the building land, which is also an important reference for the further restoration of the Taiyuan Xishan Ecological Restoration Area.
- Due to the limitations of the data selected for this study, further research is needed to validate the CIVE model based on UAV visible wavelength images and improve it to enhance its adaptability and form a more complete technical process and methodological system.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Vegetation Index | Full Name | Formula | References |
---|---|---|---|
EXG | Excess green | 2 × G − R − B | [10] |
GRVI | Green–red vegetation index | (G − R)/(G + R) | [11] |
EXGR | Excess green–excess red | EXG − (1.4 × R − G) | [12] |
NGBDI | Normalized green–blue difference index | (G − B)/(G + B) | [13] |
CIVE | Color index of vegetation extraction | 0.44 × R + 0.88 × G + 0.39 × B + 18.79 | [14] |
RGBVI | Red–green–blue vegetation index | (G2 − (R × B))/(G2 + (R × B)) | [15] |
VDVI | Visible–band difference vegetation index | (G − (R + B)/2)/(G + (R + B)/2) | [16] |
Figure Category | Vegetation | Bare Ground | Road | Fly Ash Deposition Tank | Building |
---|---|---|---|---|---|
Total number of pixels | 13,143,311 | 1,267,092 | 1,838,215 | 320,001 | 1,257,173 |
Cell Information | Pure Soil Cell Information | Pure Vegetation Cell Information | |
---|---|---|---|
Index | |||
EXG | −29.552941 | 50.658824 | |
GRVI | −0.592157 | 0.223529 | |
EXGR | −101.218803 | 45.138835 | |
NGBDI | −0.192157 | 1 | |
RGBVI | −0.458824 | 1 | |
VDVI | −0.435294 | 0.427451 | |
CIVE | 0.105882 | −0.819608 |
Vegetation Index Model | Vegetation Cover | Extraction Error/% | ||
---|---|---|---|---|
Cell Dichotomy | Supervise Classification | Difference | ||
EXG | 0.514216 | 0.737320 | 0.223104 | 30.26% |
GRVI | 0.629308 | 0.737320 | 0.108012 | 14.65% |
EXGR | 0.580621 | 0.737320 | 0.156699 | 21.25% |
NGBDI | 0.434810 | 0.737320 | 0.302510 | 41.03% |
RGBVI | 0.509429 | 0.737320 | 0.227891 | 30.91% |
VDVI | 0.570686 | 0.737320 | 0.166634 | 22.60% |
CIVE | 0.750179 | 0.737320 | 0.012859 | 1.74% |
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Tao, W.; Jin, Z. Remote Sensing Image Characteristics and Typical Area Analysis of Taiyuan Xishan Ecological Restoration Area. Sensors 2023, 23, 2108. https://doi.org/10.3390/s23042108
Tao W, Jin Z. Remote Sensing Image Characteristics and Typical Area Analysis of Taiyuan Xishan Ecological Restoration Area. Sensors. 2023; 23(4):2108. https://doi.org/10.3390/s23042108
Chicago/Turabian StyleTao, Wang, and Zhang Jin. 2023. "Remote Sensing Image Characteristics and Typical Area Analysis of Taiyuan Xishan Ecological Restoration Area" Sensors 23, no. 4: 2108. https://doi.org/10.3390/s23042108
APA StyleTao, W., & Jin, Z. (2023). Remote Sensing Image Characteristics and Typical Area Analysis of Taiyuan Xishan Ecological Restoration Area. Sensors, 23(4), 2108. https://doi.org/10.3390/s23042108