ZARARKUNANDALAR MONITORINGIDA AI VA ALGORITMLARDAN FOYDALANISH
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Аннотация:
Sun’iy yo‘ldosh tasvirlarining yana bir ustunligi – vaqt ketma-ketligini kuzatish, ya’ni har bir maydonni mavsum davomida bir necha marta suratga olib, o‘zgarish dinamikasini tahlil qilishdir. Masalan, Andijon viloyatida iyun oyida pomidor dalalari maksimal yashil vegetativ massasiga ega bo‘ladi va NDVI indeksi o‘rtacha ~0.8 atrofida bo‘ladi (0 dan 1 gacha shkalada). Agar iyul o‘rtalarida qatorlarning ba’zi joylari Tuta absoluta tomonidan shikastlana boshlasa, NDVI 0.5–0.6 gacha pasayishi mumkin. Keyingi Sentinel-2 kadrlarda bu o‘zgarish aniq ko‘zga tashlanadi – dalaning mos qismi sarg‘aygan dog‘ ko‘rinishida.
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Библиографические ссылки:
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