Fig. 1. Input data: (a) RGB Image of Site 1, (b) TIR Image of Site 1, (c) RGB Image of Site 2, (d) TIR Image of Site 2
Fig. 2. Example of lens distortion : (a) Before remove lens distortion, (b) After remove lens distortion
Fig. 3. Upsampling for pansharpening
Fig. 4. Pansharpening result by using PC1 band in urban area: (a) RGB image, (b) TIR image, (c) Pansharpening result by ATWT, (d) Pansharpening result by HPF, (e) Pansharpening result by SFIM
Fig. 5. Pansharpening result by using average of RGB band in urban area: (a) RGB image, (b) TIR image, (c) Pansharpening result by ATWT, (d) Pansharpening result by HPF, (e) Pansharpening result by SFIM
Fig. 6. Pansharpening result by using regression band in urban area: (a) RGB image, (b) TIR image, (c) Pansharpening result by ATWT, (d) Pansharpening result by HPF, (e) Pansharpening result by SFIM
Fig. 7. Pansharpening result by using PC1 band in paddy field: (a) RGB image, (b) TIR image, (c) Pansharpening result by ATWT, (d) Pansharpening result by HPF, (e) Pansharpening result by SFIM
Fig. 8. Pansharpening result by using average of RGB band in paddy field: (a) RGB image, (b) TIR image, (c) Pansharpening result by ATWT, (d) Pansharpening result by HPF, (e) Pansharpening result by SFIM
Fig. 9. Pansharpening result by using regression band in paddy field: (a) RGB image, (b) TIR image, (c) Pansharpening result by ATWT, (d) Pansharpening result by HPF, (e) Pansharpening result by SFIM
Table 1. Characteristics of camera
Table 2. Specification of flight plan
Table 3. Quantitative evaluation results of Site 1 (ATWT)
Table 4. Quantitative evaluation results of Site 2 (ATWT)
Table 5. Quantitative evaluation results of Site 1 (HPF)
Table 6. Quantitative evaluation results of Site 2 (HPF)
Table 7. Quantitative evaluation results of Site 1 (SFIM)
Table 8. Quantitative evaluation results of Site 2 (SFIM)
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