Fig. 1. Study flow
Fig. 2. Example of lens distortion correction
Fig. 3. Ortho image and DSM for target areas
Fig. 4. NDVI image
Fig. 5. GLCM image
Fig. 6. Classification according to input data
Fig. 7. Classification result
Table 1. Spec of UAV
Table 2. Spec of Multispectral camera
Table 3. Accuracy evaluation results in case 1
Table 4. Accuracy evaluation results in case 2
Table 5. Accuracy evaluation results in case 3
Table 6. Accuracy evaluation results in case 4
References
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