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Early detection of disease infection in chilli crops using sensors
journal contribution
posted on 2020-09-21, 00:00 authored by Lafta Atshan, Philip BrownPhilip Brown, Chengyuan XuChengyuan Xu, Simon WhiteControl of diseases is a key aspect of profitable chilli (Capsicum annuum L.) crop production, and early detection of disease incidence is therefore an important aspect of crop management. Visual crop assessment is the most commonly used approach, but it is expensive where labour costs are high and tends to be unreliable, especially at low levels of infection. Alternative cost-effective approaches for detection of diseases and pests at an early stage are therefore desirable. This trial focused on the potential of sensor technologies to detect diseases in a chilli crop earlier than is currently possible with visual assessment. Experiments were conducted to determine whether multispectral data could be used to detect disease infection at the individual leaf and whole plant level. A multispectral camera mounted on an unmanned aerial vehicle (UAV) and a hand-held NDVI sensor were used to collect weekly data on plants in a fungicide field trial. Bacterial spot incidence in all treatments was low (<20%) but was detectable using the sensors. The hand-held NDVI sensor was able to detect diseased plants between 5 and 20 days before significant disease symptoms were visually recorded. The hand-held sensor was found to be much more sensitive in detecting diseased plants than the UAV mounted sensor. © 2020 International Society for Horticultural Science. All rights reserved.
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Volume
1279Start Page
263End Page
269Number of Pages
8eISSN
2406-6168ISSN
0567-7572Publisher
International Society for Horticultural SciencePublisher DOI
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Peer Reviewed
- Yes
Open Access
- No
Author Research Institute
- Institute for Future Farming Systems
Era Eligible
- Yes
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Acta HorticulturaeUsage metrics
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