Improving the Accuracy of Remote Sensing Land Cover Classification by GEO-ECO Zoning Coupled with Geostatistical Simulation
Abstract
:1. Introduction
- (1)
- Taking Geo-Eco zoning as the area of geostatistics. Generally the area of geostatistics is based on the selected image area, which often contains boundary effect, that is, the fact that a class may have statistically biased smaller frequencies of transitions if it has a higher chance of occurring at boundaries of the study area because boundary polygons are incomplete and have no transition to other classes beyond the boundary [28]. Generally, the boundary of Geo-Eco zoning does not cross two different types of land cover to avoid the boundary effect.
- (2)
- In previous research, the large number of sample pixels were interpreted by experts to obtain a transiogram model [28], but this process is time-consuming and laborious. In this study, reliable verification data published by some websites or institutions related to land cover research are reused to reduce the work on visual interpretation.
- (3)
- The Co-MCSS method not only combines remote sensing pre-classified images but also takes various attributes of Geo-Eco zoning (such as DEM, slope, temperature, and humidity) as auxiliary data to participate in the simulation and calculation of cross field transition probability. With the combination of additional attribute information, the simulation algorithm becomes more robust.
2. Method
2.1. Geo-Eco Zoning Rule Base
2.2. Markov Chain Co-Simulation
2.2.1. Process
- (1)
- The land cover verification points from networks were collected from the relevant websites (citations are provided below). If the amount of verification points from networks was not enough for the transiogram estimation, then visual interpretation of sample points was added as a supplement to form the sample data set.
- (2)
- Traditional methods, such as the maximum likelihood method, were used to obtain pre-classified images. The natural attribute layers (such as DEM, slope, and aspect) of Geo-Eco zoning constituted the auxiliary data set for co-simulation.
- (3)
- A set of transiograms were estimated by using the sample data set.
- (4)
- The cross field transition probabilities were estimated by the sample and auxiliary data set.
- (5)
- Co-MCSS algorithm was carried out under the condition of sample data and auxiliary data.
- (6)
- The optimal prediction map and occurrence probability map were obtained.
2.2.2. Transiogram
2.2.3. Cross Field Transition Probability Matrix
2.2.4. MCRF Co-Simulation (Co-MCSS)
3. Results
3.1. Study Area
3.2. Transfer Probability Diagram
3.3. Simulation Results
3.3.1. Simulation Results of MCRF
3.3.2. Simulation Results of Co-MCRF with Auxiliary Data
3.4. Accuracy Analysis
4. Conclusions
- (1)
- In this study, the image size that can be processed is limited because of the high operation cost of the algorithm. The experimental area only contains one Geo-eco zone. In future studies, the algorithm should be optimized, and a GPU-parallel acceleration method should be used to increase the amount of data that can be processed and make the algorithm more practical.
- (2)
- Existing data are limited, thus only the attribute data related to elevation are tested, and the impact of other types of auxiliary data are yet to be described. The role of Geo-Eco zoning in geostatistical simulation should be further explored. For example, geoscience knowledge on Geo-Eco zoning can be applied and combined with verification points to generate reasonable transiograms and further reduce the number of sample pixels required by the algorithm.
- (3)
- The case study only tested in one site with a high density of the sample points. The method needs to be verified with a wider scope and more example sites in the future.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Color | Code | Land Cover Type |
---|---|---|
10 | Cropland | |
20 | Forest | |
30 | Grass | |
40 | Shrub | |
50 | Wetland | |
60 | Water | |
80 | Artificial | |
90 | Bareland |
Simulation Method | Number of Matching | Proportion |
---|---|---|
Pre-classified image (GlobeLand30-2015) | 5962 | 75.34% |
Simulation results of MCRF | 6451 | 81.52% |
Simulation results (with auxiliary data) | 6843 | 86.48% |
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Zhu, L.; Li, J.; La, Y.; Jia, T. Improving the Accuracy of Remote Sensing Land Cover Classification by GEO-ECO Zoning Coupled with Geostatistical Simulation. Appl. Sci. 2021, 11, 553. https://doi.org/10.3390/app11020553
Zhu L, Li J, La Y, Jia T. Improving the Accuracy of Remote Sensing Land Cover Classification by GEO-ECO Zoning Coupled with Geostatistical Simulation. Applied Sciences. 2021; 11(2):553. https://doi.org/10.3390/app11020553
Chicago/Turabian StyleZhu, Ling, Jing Li, Yixuan La, and Tao Jia. 2021. "Improving the Accuracy of Remote Sensing Land Cover Classification by GEO-ECO Zoning Coupled with Geostatistical Simulation" Applied Sciences 11, no. 2: 553. https://doi.org/10.3390/app11020553
APA StyleZhu, L., Li, J., La, Y., & Jia, T. (2021). Improving the Accuracy of Remote Sensing Land Cover Classification by GEO-ECO Zoning Coupled with Geostatistical Simulation. Applied Sciences, 11(2), 553. https://doi.org/10.3390/app11020553