Corceiro et al., 2023 - Google Patents
Methods for detecting and classifying weeds, diseases and fruits using AI to improve the sustainability of agricultural crops: a reviewCorceiro et al., 2023
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- 18079812815509759209
- Author
- Corceiro A
- Alibabaei K
- Assunção E
- Gaspar P
- Pereira N
- Publication year
- Publication venue
- Processes
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Snippet
The rapid growth of the world's population has put significant pressure on agriculture to meet the increasing demand for food. In this context, agriculture faces multiple challenges, one of which is weed management. While herbicides have traditionally been used to control weed …
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