An Image Labeling Tool and Agricultural Dataset for Deep Learning
- URL: http://arxiv.org/abs/2004.03351v1
- Date: Mon, 6 Apr 2020 13:38:01 GMT
- Title: An Image Labeling Tool and Agricultural Dataset for Deep Learning
- Authors: Patrick Wspanialy, Justin Brooks, Medhat Moussa
- Abstract summary: We introduce a labeling tool and dataset aimed to facilitate computer vision research in agriculture.
The dataset includes original images collected from commercial greenhouses, images from PlantVillage, and images from Google Images.
In total the dataset contained 10k tomatoes, 7k leaves, 2k stems, and 2k diseased leaf annotations.
- Score: 4.107998999964667
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We introduce a labeling tool and dataset aimed to facilitate computer vision
research in agriculture. The annotation tool introduces novel methods for
labeling with a variety of manual, semi-automatic, and fully-automatic tools.
The dataset includes original images collected from commercial greenhouses,
images from PlantVillage, and images from Google Images. Images were annotated
with segmentations for foreground leaf, fruit, and stem instances, and diseased
leaf area. Labels were in an extended COCO format. In total the dataset
contained 10k tomatoes, 7k leaves, 2k stems, and 2k diseased leaf annotations.
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