Апаратура і методи дистанційного зондування рослинності в оптичному діапазоні
Рубрика:
Кочубей, СМ |
Косм. наука технол. 2002, 8 ;(2-3):271-275 |
Мова публікації: Російська |
Анотація: Відсутня
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Ключові слова: дистанційне зондування Землі |
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