研究目的
To develop a comprehensive method for monthly land-cover classification in the Heihe river basin (HRB) with high spatial resolution and to distinguish the major crops in the HRB by integrating multiple classifiers and multisource data.
研究成果
The proposed method, LCMM, successfully integrates multiple classifiers and multisource remotely sensed data to create a monthly land-cover map with 30-m resolution and recognize major crops in the HRB. The land-cover map has a very high accuracy of over 90%, making it much more usable for research on land-process modeling, eco-hydrological modeling, and crop-yield estimation.
研究不足
The preprocessing of multisource remote-sensing data, including geo-registration and atmospheric correction, is very important and usually involves considerable manual work. The criteria for land-cover classification are flexible but transferring and extending them to other regions is a key issue.
1:Experimental Design and Method Selection
The methodology integrates multiple classifiers including thresholding, support vector machine (SVM), object-based method, and time-series analysis. All the data and classifiers are organized using a decision tree.
2:Sample Selection and Data Sources
Three types of data including MODIS, HJ-1/CCD, and Landsat/TM and Google Earth images are used.
3:List of Experimental Equipment and Materials
HJ-1/CCD data from the Huan Jing 1 (HJ-1) satellite, Thematic Mapper (TM) data from Landsat 5, and Moderate Resolution Imaging Spectroradiometer (MODIS) onboard both the Terra and Aqua satellites, Google Earth imagery with very high spatial resolution (VHSR).
4:Experimental Procedures and Operational Workflow
Monthly land-cover maps of the HRB in 2013 with 30-m spatial resolution are made. A comprehensive validation is performed to evaluate the classification accuracy.
5:Data Analysis Methods
The confusion matrix is used to evaluate the classification accuracy. A ground campaign was performed to evaluate the accuracy of crop classification.
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