Author:
Jin Xiaojun,Bagavathiannan Muthukumar,Maity Aniruddha,Chen Yong,Yu Jialin
Abstract
Abstract
Background
Precision spraying of postemergence herbicides according to the herbicide weed control spectrum can substantially reduce herbicide input. The objective of this research was to evaluate the effectiveness of using deep convolutional neural networks (DCNNs) for detecting and discriminating weeds growing in turfgrass based on their susceptibility to ACCase-inhibiting and synthetic auxin herbicides.
Results
GoogLeNet, MobileNet-v3, ShuffleNet-v2, and VGGNet were trained to discriminate the vegetation into three categories based on the herbicide weed control spectrum: weeds susceptible to ACCase-inhibiting herbicides, weeds susceptible to synthetic auxin herbicides, and turfgrass without weed infestation (no herbicide). ShuffleNet-v2 and VGGNet showed high overall accuracy (≥ 0.999) and F1 scores (≥ 0.998) in the validation and testing datasets to detect and discriminate weeds susceptible to ACCase-inhibiting and synthetic auxin herbicides. The inference time of ShuffleNet-v2 was similar to MobileNet-v3, but noticeably faster than GoogLeNet and VGGNet. ShuffleNet-v2 was the most efficient and reliable model among the neural networks evaluated.
Conclusion
These results demonstrated that the DCNNs trained based on the herbicide weed control spectrum could detect and discriminate weeds based on their susceptibility to selective herbicides, allowing the precision spraying of particular herbicides to susceptible weeds and thereby saving more herbicides. The proposed method can be used in a machine vision-based autonomous spot-spraying system of smart sprayers.
Funder
Postgraduate Research &Practice Innovation Program of Jiangsu Province
Jiangsu Provincial Key Research and Development Program
Jiangsu Agricultural Science and Technology Innovation Fund
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Subject
Plant Science,Genetics,Biotechnology
Reference60 articles.
1. Milesi C, Elvidge C, Dietz J, Tuttle B, Nemani R, Running S. A strategy for mapping and modeling the ecological effects of US lawns. J Turfgrass Manag. 2005;1(1):83–97.
2. Hamuda E, Glavin M, Jones E. A survey of image processing techniques for plant extraction and segmentation in the field. Comput Electron Agric. 2016;125:184–99. https://doi.org/10.1016/j.compag.2016.04.024.
3. Liu B, Bruch R. Weed detection for selective spraying: a review. Curr Robot Rep. 2020;1(1):19–26.
4. McElroy J, Martins D. Use of herbicides on turfgrass. Planta Daninha. 2013;31:455–67.
5. Yu J, Schumann AW, Cao Z, Sharpe SM, Boyd NS. Weed detection in perennial ryegrass with deep learning convolutional neural network. Front Plant Sci. 2019;10:1422–1422. https://doi.org/10.3389/fpls.2019.01422.
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