Classification of Alpine Grasslands in Cold and High Altitudes Based on Multispectral Landsat-8 Images: A Case Study in Sanjiangyuan National Park, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Source and Pre-Processing
2.1.1. Landsat-8 Remote Sensing Images
- (1)
- Radiometric Calibration. Radiometric calibration converts the DN value of the raw image to the reflectance at the top of the atmosphere, which eliminates the response differences between different sensors in the same image, and also eliminates the effect of solar altitude angle on the image. The process uses radiometric calibration in ENVI 5.1 software to process the raw image, where the associated irradiance conversion parameters are read from the image head files for FLAASH atmospheric correction;
- (2)
- Atmospheric Correction. All Landsat-8 data are atmospherically corrected by the FLAASH atmospheric correction module in ENVI 5.1. FLAASH uses the MODTRAN4+ radiative transfer model to effectively remove water vapor/aerosol scattering effects. At the same time, based on pixel-level correction, the “proximity effect” of the cross-radiation between the target pixel and adjacent pixels is corrected, and high-precision ground-object-reflectivity data can be obtained.
2.1.2. GPS and UAV Sample Vegetation Types
2.2. Cloud-Removal Algorithms
- (1)
- Cloud detection
- (2)
- Shadow detection
- (3)
- Cloud and shadow removal
2.3. Snow- and Glacier-Removal Algorithms
2.4. Vegetation Classification Tree
3. Results and Discussion
3.1. Classification Accuracy and Validation
3.2. Classification Results
- (1)
- Yellow River Source Park
- (2)
- Yangtze River Source Park
- (3)
- Lancang River Source Park
4. Conclusions
- (1)
- The classification results showed that the SVM classifier could better distinguish the four vegetation types of alpine grassland, and the overall classification accuracy was relatively high. The average Kappa coefficient was 0.8366 among the vegetation types of the three parks, and the overall classification mapping accuracy could reach 84.52%. The mapping accuracy for the user was as high as 87.67%. The classification performances between the major land-use types were relatively high and the classification accuracies were very high. However, in the alpine grassland subcategories, the classification accuracies of the four typical grasslands were relatively low, especially between desert steppe and alpine meadow, and desert steppe and alpine steppe. This is highly related to the limited number of GPS sample points in the field, the low heterogeneity of the selected sample points, and high consistencies of the spectral characteristics of the four grassland types. The relatively low classification accuracy indicates the limitations of Landsat-8 multispectral remote sensing imageries in finer-resolution grassland classifications of high-altitude alpine mountains;
- (2)
- The accuracy comparison between the dataset produced in this paper and the other similar products demonstrated that the classification results of this paper were good at distinguishing the four typical types of alpine grasslands. In contrast, the other similar products tested were unable to distinguish grassland types either due to the low spatial resolution or inadequate classification system. This demonstrates that the datasets produced in this paper had the advantages of finer alpine grassland types and higher spatial/temporal resolutions;
- (3)
- The method in this paper can be applied to other similar cold and high altitudes with short vegetation growing seasons, but abundant clouds and snow/glaciers. The method in this paper can improve the efficiency of producing grassland type datasets and engineeringly generate year-by-year alpine grassland cover datasets, and provide high-quality data with high time efficiency and high spatiotemporal resolutions. The method can be utilized for other multispectral satellite imageries with the same band matching, such as Landsat 7, Landsat 9, Sentinel-2, etc. The results of this paper can facilitate further essential research on alpine grassland types, distribution, above-ground biomass, carrying capacity, and grassland degradation on the QTP with finer spatial and temporal resolutions.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Code | Classification | Description |
---|---|---|
1 | Evergreen Needleleaf Forest | Land dominated by trees with a percent canopy cover of >60% and height exceeding 2 m. Almost all trees remain green all year. Canopy is never without green foliage. |
2 | Evergreen Broadleaf Forest | Land dominated by trees with a percent canopy cover of >60% and height exceeding 2 m. Almost all trees remain green all year. Canopy is never without green foliage. |
3 | Deciduous Needleleaf Forest | Land dominated by trees with a percent canopy cover of >60% and height exceeding 2 m. Consists of seasonal needleleaf tree communities with an annual cycle of leaf-on and leaf-off periods. |
4 | Deciduous Broadleaf Forest | Land dominated by trees with a percent canopy cover of ≥60% and height exceeding 2 m. Consists of seasonal broadleaf tree communities with an annual cycle of leaf-on and leaf-off periods. |
5 | Mixed Forest | Land dominated by trees with a percent canopy cover of >60% and height exceeding 2 m. Consists of tree communities with interspersed mixtures or mosaics of the other four forest cover types. None of the forest types exceeds 60% of the landscape. |
6 | Closed Shrublands | Lands with woody vegetation less than 2 m tall and with shrub canopy cover of >60%. The shrub foliage can be either evergreen or deciduous. |
7 | Open Shrublands | Lands with woody vegetation less than 2 m tall and with shrub canopy cover between 10–60%. The shrub foliage can be either evergreen or deciduous. |
8 | Woody Savannas | Lands with herbaceous and other understorey systems and with forest canopy between 30 and 60%. The forest cover height exceeds 2 m. |
9 | Savannas | Lands with herbaceous and other understorey systems and with forest canopy of 10–30%. The forest cover height exceeds 2 m. |
10 | Grasslands | Lands with herbaceous types of cover. Tree and shrub cover is less than 10%. |
11 | Permanent Wetlands | Lands with a permanent mixture of water and herbaceous or woody vegetation that cover extensive areas. The vegetation can be present in either salt, brackish, or fresh water. |
12 | Croplands | Lands covered with temporary crops followed by harvest and a bare soil period (e.g., single and multiple cropping systems). Note that perennial woody crops will be classified as the appropriate forest or shrub land-cover types. |
13 | Urban and Built-Up | Land covered by buildings and other man-made structures. Note that this class will not be mapped from the AVHRR imagery, but will be developed from the populated places layer that is part of the Digital Chart of the World (Danko 1992). |
14 | Cropland/Natural Vegetation Mosaic | Land with a mosaic of croplands, forest, shrublands, and grasslands in which no one component comprises more than 60% of the landscape. |
15 | Snow and Ice | Land under snow and/or ice cover throughout the year. |
16 | Barren or Sparsely Vegetated | Land of exposed soil, sand, rocks, or snow that never has more than 10% vegetated cover during any time of the year. |
17 | Water Bodies | Oceans, seas, lakes, reservoirs, and rivers. Can be either fresh or salt water. |
Code | Name | Illustration | Description |
---|---|---|---|
1 | Water | The color composite map is black, homogeneous, and has contiguous blocks with clear boundaries, which are easy to distinguish from other grasslands. | |
2 | Swamp meadow | The formation of richly colored patches of standing water and low-lying areas near rivers and lakes with seasonal standing water, interspersed with puddles of standing water, is extremely easy to identify in combination with the topography. | |
3 | Alpine meadow | In the upper part of the marsh meadow, the color is dark green, clearly distinguished from other vegetation types, and interspersed with alpine steppe vegetation types. | |
4 | Alpine steppe | The color is shiny and light green, and interspersed with alpine meadows and desert steppes, which are more difficult to distinguish. | |
5 | Desert steppe | Near the bare ground, the color can be clearly distinguished from bare soil, with sparse vegetation and bright colors. | |
6 | Glacier/snow | Strong spectral albedo, easy to distinguish from other features, bright blue or white distribution, and obvious morphological features combined with the topography, making it easier to identify. | |
7 | Bare land | Lack of vegetation cover, dark purple or dark red color, and obvious textures of wind-forming and water-forming effects. |
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Wei, Y.; Wang, W.; Tang, X.; Li, H.; Hu, H.; Wang, X. Classification of Alpine Grasslands in Cold and High Altitudes Based on Multispectral Landsat-8 Images: A Case Study in Sanjiangyuan National Park, China. Remote Sens. 2022, 14, 3714. https://doi.org/10.3390/rs14153714
Wei Y, Wang W, Tang X, Li H, Hu H, Wang X. Classification of Alpine Grasslands in Cold and High Altitudes Based on Multispectral Landsat-8 Images: A Case Study in Sanjiangyuan National Park, China. Remote Sensing. 2022; 14(15):3714. https://doi.org/10.3390/rs14153714
Chicago/Turabian StyleWei, Yanqiang, Wenwen Wang, Xuejie Tang, Hui Li, Huawei Hu, and Xufeng Wang. 2022. "Classification of Alpine Grasslands in Cold and High Altitudes Based on Multispectral Landsat-8 Images: A Case Study in Sanjiangyuan National Park, China" Remote Sensing 14, no. 15: 3714. https://doi.org/10.3390/rs14153714
APA StyleWei, Y., Wang, W., Tang, X., Li, H., Hu, H., & Wang, X. (2022). Classification of Alpine Grasslands in Cold and High Altitudes Based on Multispectral Landsat-8 Images: A Case Study in Sanjiangyuan National Park, China. Remote Sensing, 14(15), 3714. https://doi.org/10.3390/rs14153714