FAO AGRIS - International System for Agricultural Science and Technology

Weed and crop species classification using computer vision and deep learning technologies in greenhouse conditions

G C, Sunil | Zhang, Yu | Koparan, Cengiz | Ahmed, Mohammed Raju | Howatt, Kirk | Sun, Xin


Bibliographic information
Publisher
New York : Springer-Verlag
Other Subjects
Bassia (amaranthaceae); Model validation; Weed classification; Corn; Deep learning; Support vector machines; Black beans; Food research; Feature selection
Language
English
License
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Type
Journal Article; Text

2024-02-29
2026-02-03
MODS
Data Provider
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