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Weed Identification in Maize Fields Based on Improved Swin-Unet
Kazi Mostafa
School of Intelligent Manufacturing Ecosystem
Research output
:
Contribution to journal
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Article
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peer-review
14
Citations (Scopus)
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Earth and Planetary Sciences
Ability
14%
Accuracy
14%
Act
14%
Agricultural Machinery
14%
Algorithms
14%
Area
14%
Block
14%
Corn
100%
Data Set
14%
Environment
14%
Generalisation
14%
Image
14%
Intersection
14%
Lighting
14%
Map
14%
Mask
14%
Model
85%
Module
14%
Pixel
14%
Real Time
28%
Recognition
14%
Segmentation
57%
Semantics
28%
Speed
14%
Transformer
14%
Weather Condition
14%
Weed
100%
Engineering
Dataset
20%
Development
20%
Environment
20%
Fields
100%
Images
20%
Intersections
20%
Maps
20%
Models
100%
Modules
20%
Performance
20%
Processing Algorithm
20%
Recognition Model
20%
Regularization
20%
Pharmacology, Toxicology and Pharmaceutical Science
Weed
100%
Agricultural and Biological Sciences
Agricultural Machinery
14%
Lighting
14%
Computer Science
Pixel Accuracy
16%