研究目的
To develop and assess a new algorithm for filling gaps in Landsat reflectance time series, specifically designed to handle large-area gaps over heterogeneous and temporally dynamic surfaces using limited data without relying on other satellite sources.
研究成果
The SAMSTS algorithm effectively fills large gaps in Landsat time series with mean RMSD values below 0.02, outperforming temporal interpolation and closest pixel methods. It is robust for heterogeneous and dynamic agricultural areas but has limitations in handling very abrupt changes and requires sufficient similar pixels for accuracy.
研究不足
The algorithm may perform less well over surfaces with very rapid changes (e.g., abrupt harvesting or flooding) or when few similar pixels are available. It is computationally intensive, taking 4-5 hours per tile, and requires parameter tuning for different environments. It does not use thermal bands or other satellite data, limiting applicability in some contexts.
1:Experimental Design and Method Selection:
The study uses a spectral-angle-mapper (SAM) based spatio-temporal similarity (SAMSTS) algorithm for gap filling. It involves time series segmentation, clustering, and identification of alternative similar pixels using a revised SAM metric adaptive to missing observations.
2:Sample Selection and Data Sources:
Six months of Landsat 8 OLI reflectance data from 2013 over three 150x150 km areas in California, Minnesota, and Kansas are used. Data are processed to surface reflectance using LEDAPS and include green, red, NIR, and two SWIR bands.
3:List of Experimental Equipment and Materials:
Landsat 8 OLI data, WELD processing system, CDL product for land cover context, computational setup with C language in Visual Studio 2013 on Windows-7 with 3.6 GHz CPU and 16 GB memory.
4:6 GHz CPU and 16 GB memory.
Experimental Procedures and Operational Workflow:
4. Experimental Procedures and Operational Workflow: Simulated gaps are created by removing pixels from target images. The SAMSTS algorithm segments and clusters the time series, identifies alternative segments and pixels, and fills gaps. Comparisons are made with temporal interpolation and closest pixel substitution methods.
5:Data Analysis Methods:
Accuracy is assessed using root-mean-square difference (RMSD) between filled and original pixel values for five bands. Statistical comparisons are made with other gap-filling approaches.
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