4Weed Dataset: Annotated Imagery Weeds Dataset
- URL: http://arxiv.org/abs/2204.00080v1
- Date: Tue, 29 Mar 2022 03:10:54 GMT
- Title: 4Weed Dataset: Annotated Imagery Weeds Dataset
- Authors: Varun Aggarwal, Aanis Ahmad, Aaron Etienne, Dharmendra Saraswat
- Abstract summary: The dataset consists of 159 Cocklebur images, 139 Foxtail images, 170 Redroot Pigweed images and 150 Giant Ragweed images.
Bounding box annotations were created for each image to prepare the dataset for training both image classification and object detection deep learning networks.
- Score: 1.5484595752241122
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Weeds are a major threat to crops and are responsible for reducing crop yield
worldwide. To mitigate their negative effect, it is advantageous to accurately
identify them early in the season to prevent their spread throughout the field.
Traditionally, farmers rely on manually scouting fields and applying herbicides
for different weeds. However, it is easy to confuse between crops with weeds
during the early growth stages. Recently, deep learning-based weed
identification has become popular as deep learning relies on convolutional
neural networks that are capable of learning important distinguishable features
between weeds and crops. However, training robust deep learning models requires
access to large imagery datasets. Therefore, an early-season weeds dataset was
acquired under field conditions. The dataset consists of 159 Cocklebur images,
139 Foxtail images, 170 Redroot Pigweed images and 150 Giant Ragweed images
corresponding to four common weed species found in corn and soybean production
systems.. Bounding box annotations were created for each image to prepare the
dataset for training both image classification and object detection deep
learning networks capable of accurately locating and identifying weeds within
corn and soybean fields. (https://osf.io/w9v3j/)
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