Fig. 1. The flowchart of the proposed method
Fig. 3. Experimental images of study area (Site 2)
Fig. 4. NC region of Site 1
Fig. 5. NC region of Site 2
Fig. 6. The Comparison of the results of radiometric normalization (Site 1)
Fig. 7. The Comparison of the results of radiometric normalization (Site 2)
Fig. 2. Experimental images of study area (Site 1)
Table 1. Equations of each spectral index
Table 2. Specifications of the satellite sensors
Table 3. NRMSE values of relative radiometric normalization results (Site 1)
Table 4. NRMSE values of relative radiometric normalization results (Site 2)
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