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Semi-supervised Learning for Weed and Crop Segmentation Using UAV Imagery
by
Nong, Chunshi
, Fan, Xijian
, Wang, Junling
in
Accuracy
/ Annotations
/ Classification
/ crop recognition
/ Crop yield
/ Crops
/ Food production
/ Herbicides
/ Image processing
/ Image segmentation
/ Machine learning
/ Methods
/ Neural networks
/ Plant Science
/ precision agriculture
/ Regularization
/ Semantic segmentation
/ Semantics
/ Semi-supervised learning
/ Support vector machines
/ Training
/ Unmanned aerial vehicles
/ Vegetation
/ Weed control
/ weed mapping
/ Weeds
2022
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Semi-supervised Learning for Weed and Crop Segmentation Using UAV Imagery
by
Nong, Chunshi
, Fan, Xijian
, Wang, Junling
in
Accuracy
/ Annotations
/ Classification
/ crop recognition
/ Crop yield
/ Crops
/ Food production
/ Herbicides
/ Image processing
/ Image segmentation
/ Machine learning
/ Methods
/ Neural networks
/ Plant Science
/ precision agriculture
/ Regularization
/ Semantic segmentation
/ Semantics
/ Semi-supervised learning
/ Support vector machines
/ Training
/ Unmanned aerial vehicles
/ Vegetation
/ Weed control
/ weed mapping
/ Weeds
2022
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Do you wish to request the book?
Semi-supervised Learning for Weed and Crop Segmentation Using UAV Imagery
by
Nong, Chunshi
, Fan, Xijian
, Wang, Junling
in
Accuracy
/ Annotations
/ Classification
/ crop recognition
/ Crop yield
/ Crops
/ Food production
/ Herbicides
/ Image processing
/ Image segmentation
/ Machine learning
/ Methods
/ Neural networks
/ Plant Science
/ precision agriculture
/ Regularization
/ Semantic segmentation
/ Semantics
/ Semi-supervised learning
/ Support vector machines
/ Training
/ Unmanned aerial vehicles
/ Vegetation
/ Weed control
/ weed mapping
/ Weeds
2022
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Semi-supervised Learning for Weed and Crop Segmentation Using UAV Imagery
Journal Article
Semi-supervised Learning for Weed and Crop Segmentation Using UAV Imagery
2022
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Overview
Weed control has received great attention due to its significant influence on crop yield and food production. Accurate mapping of crop and weed is a prerequisite for the development of an automatic weed management system. In this paper, we propose a weed and crop segmentation method, SemiWeedNet, to accurately identify the weed with varying size in complex environment, where semi-supervised learning is employed to reduce the requirement of a large amount of labelled data. SemiWeedNet takes the labelled and unlabelled images into account when generating a unified semi-supervised architecture based on semantic segmentation model. A multiscale enhancement module is created by integrating the encoded feature with the selective kernel attention, to highlight the significant features of the weed and crop while alleviating the influence of complex background. To address the problem caused by the similarity and overlapping between crop and weed, an online hard example mining (OHEM) is introduced to refine the labelled data training. This forces the model to focus more on pixels that are not easily distinguished, and thus effectively improve the image segmentation. To further exploit the meaningful information of unlabelled data, consistency regularisation is introduced by maintaining the context consistency during training, making the representations robust to the varying environment. Comparative experiments are conducted on a publicly available dataset. The results show the SemiWeedNet outperforms the state-of-the-art methods, and its components have promising potential in improving segmentation.
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