Detection of biotic and abiotic stresses in crops by using hierarchical self organizing classifiers
Hyperspectral signatures can provide abundant information regarding health status of crops; however it is difficult to discriminate between biotic and abiotic stress. In this study, the case of simultaneous occurrence of yellow rust disease symptoms and nitrogen stress was investigated by using hyperspectral features from a ground based hyperspectral imaging system. Hyperspectral images of healthy and diseased plant canopies were taken at Rothamsted Research, UK by a Specim V10 spectrograph. Five wavebands of 20 nm width were utilized for accurate identification of each of the stress and healthy plant conditions. The technique that was developed used a hybrid classification scheme consisting of hierarchical self organizing classifiers. Three different architectures were considered: counter-propagation artificial neural networks, supervised Kohonen networks (SKNs) and XY-fusion. A total of 12 120 spectra were collected. From these 3 062 (25.3%) were used for testing. The results of biotic and abiotic stress identification appear to be promising, reaching more than 95% for all three architectures. The proposed approach aimed at sensor based detection of diseased and stressed plants so that can be treated site specifically contributing to a more effective and precise application of fertilizers and fungicides according to specific plant’s needs.
| Item Type | Article |
|---|---|
| Open Access | Not Open Access |
| Additional information | This was published by the senior author without checking with me based on work and text I has supplied about 14 years earlier. Defra is acknowledged as the UK sponsor but it was mostly an EU project called OPTIDIS. Alastair McCartney was the PI here. This was published without my knowledge and my involvement is based on text I had provided for previous publications with one of the authors |
| Keywords | crop disease, machine learning, neural networks, nitrogen stress, hyperspectral sensing |
| Project | EU QLK5-CT-1999-01280, Agrivision: Development of a system for low cost remotely managed, automated crop stress monitoring and detection, OPTIDIS project 2000-2004, BBSRC Strategic Programme in Smart Crop Protection |
| Date Deposited | 05 Dec 2025 10:06 |
| Last Modified | 19 Dec 2025 14:44 |
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