Remote monitoring of forest insect defoliation. A review
- Rullan Silva, C. D.
- Olthoff, A.E.
- Delgado de la Mata, José Antonio
- Pajares Alonso, A.
ISSN: 2171-5068
Datum der Publikation: 2013
Ausgabe: 22
Nummer: 3
Seiten: 377-391
Art: Artikel
Andere Publikationen in: Forest systems
Bibliographische Referenzen
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