FAO AGRIS - International System for Agricultural Science and Technology

Moisture content estimation and senescence phenotyping of novel Miscanthus hybrids combining UAV-based remote sensing and machine learning

Impollonia, Giorgio | Croci, Michele | Martani, Enrico | Ferrarini, Andrea | Kam, Jason | Trindade, Luisa M. | Clifton-Brown, John | Amaducci, Stefano


Bibliographic information
Volume 14 Issue 6 Pagination 639 - 656 ISSN 1757-1693
Other Subjects
Eps; Gam; Multispectral; High-throughput plant phenotyping; Plant breeding (pbr); Transferability; Uav
Language
English
Type
Text; Journal Article; Journal Part

2024-07-23
2026-02-03
MODS
Data Provider
Links
Lookup at Google Scholar
If you notice any incorrect information relating to this record, please contact us at [email protected]