Author:
Jung Minah,Song Jong Seob,Shin Ah-Young,Choi Beomjo,Go Sangjin,Kwon Suk-Yoon,Park Juhan,Park Sung Goo,Kim Yong-Min
Abstract
AbstractAccurately detecting disease occurrences of crops in early stage is essential for quality and yield of crops through the decision of an appropriate treatments. However, detection of disease needs specialized knowledge and long-term experiences in plant pathology. Thus, an automated system for disease detecting in crops will play an important role in agriculture by constructing early detection system of disease. To develop this system, construction of a stepwise disease detection model using images of diseased-healthy plant pairs and a CNN algorithm consisting of five pre-trained models. The disease detection model consists of three step classification models, crop classification, disease detection, and disease classification. The ‘unknown’ is added into categories to generalize the model for wide application. In the validation test, the disease detection model classified crops and disease types with high accuracy (97.09%). The low accuracy of non-model crops was improved by adding these crops to the training dataset implicating expendability of the model. Our model has the potential to apply to smart farming of Solanaceae crops and will be widely used by adding more various crops as training dataset.
Funder
the National Research Foundation of Korea
the Ministry of Agriculture, Food, and Rural Affairs
the Korea Forest Service
Publisher
Springer Science and Business Media LLC
Reference45 articles.
1. Martinelli, F. et al. Advanced methods of plant disease detection. A review. Agron. Sustain. Dev. 35, 1–25 (2015).
2. Sankaran, S., Mishra, A., Ehsani, R. & Davis, C. A review of advanced techniques for detecting plant diseases. Comput. Electron. Agric. 72, 1–13 (2010).
3. Hasan, R. I., Yusuf, S. M. & Alzubaidi, L. Review of the state of the art of deep learning for plant diseases: A broad analysis and discussion. Plants 9, 1302 (2020).
4. Zhu, N. et al. Deep learning for smart agriculture: Concepts, tools, applications, and opportunities. Int. J. Agric. Biol. Eng. 11, 32–44 (2018).
5. Shah, D., Trivedi, V., Sheth, V., Shah, A. & Chauhan, U. ResTS: Residual deep interpretable architecture for plant disease detection. Inf. Process. Agric. 9, 212–223 (2022).
Cited by
24 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献