1. Weed Identification in Maize, Sunflower, and Potatoes with the Aid of Convolutional Neural Networks
- Author
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Gerassimos G. Peteinatos, Philipp Reichel, Jeremy Karouta, Roland Gerhards, Dionisio Andújar, EIT Food, and European Commission
- Subjects
Weed identification ,Xception ,02 engineering and technology ,Agricultural engineering ,ResNet–50 ,Lamium purpureum ,food ,Stellaria media ,0202 electrical engineering, electronic engineering, information engineering ,Avena fatua ,lcsh:Science ,Mathematics ,biology ,computer vision ,Convolutional Neural Networks ,deep learning ,VGG16 ,weed management ,weed identification ,Mechanical weed control ,business.industry ,Deep learning ,Weed management ,04 agricultural and veterinary sciences ,Weed control ,biology.organism_classification ,food.food ,040103 agronomy & agriculture ,0401 agriculture, forestry, and fisheries ,General Earth and Planetary Sciences ,lcsh:Q ,Computer vision ,Convolutional neural networks ,020201 artificial intelligence & image processing ,Precision agriculture ,Artificial intelligence ,business ,Weed - Abstract
The increasing public concern about food security and the stricter rules applied worldwide concerning herbicide use in the agri-food chain, reduce consumer acceptance of chemical plant protection. Site-Specific Weed Management can be achieved by applying a treatment only on the weed patches. Crop plants and weeds identification is a necessary component for various aspects of precision farming in order to perform on the spot herbicide spraying or robotic weeding and precision mechanical weed control. During the last years, a lot of different methods have been proposed, yet more improvements need to be made on this problem, concerning speed, robustness, and accuracy of the algorithms and the recognition systems. Digital cameras and Artificial Neural Networks (ANNs) have been rapidly developed in the past few years, providing new methods and tools also in agriculture and weed management. In the current work, images gathered by an RGB camera of Zea mays, Helianthus annuus, Solanum tuberosum, Alopecurus myosuroides, Amaranthus retroflexus, Avena fatua, Chenopodium album, Lamium purpureum, Matricaria chamomila, Setaria spp., Solanum nigrum and Stellaria media were provided to train Convolutional Neural Networks (CNNs). Three different CNNs, namely VGG16, ResNet–50, and Xception, were adapted and trained on a pool of 93,000 images. The training images consisted of images with plant material with only one species per image. A Top-1 accuracy between 77% and 98% was obtained in plant detection and weed species discrimination, on the testing of the images., This research was funded by EIT FOOD as project# 20140 DACWEED: Detection and ACtuation system for WEED management. EIT FOOD is the innovation community on Food of the European Institute of Innovation and Technology (EIT), an EU body under Horizon 2020, the EU Framework Programme for Research and Innovation
- Published
- 2020