Publication | Open Access
Foliar Disease Detection in the Field Using Optical Sensor Fusion
64
Citations
21
References
2008
Year
The objective of this research was to detect and recognize the plant stress caused by disease in the field conditions by combining hyperspectral reflection information between 450 and 900nm and fluorescence imaging. The results can be used to develop a tractor mounted cost-effective optical device for site-specific pesticide application in order to reduce and optimize pesticide use. The work reported here used yellow rust (Puccinia striiformis) disease of winter wheat as a model system. In the field hyperspectral reflection images of healthy and infected plants were taken by an imaging spectrograph mounted at spray boom height. Leaf recognition and spectral normalization procedures were used to account for differences in canopy architecture and spectral illumination were used. A model, based on quadratic discrimination, was built, using a selected group of wavebands to differentiate diseased from healthy plants. The model could discriminate diseased from healthy crop with an error of about 10 % using measurements from only three wavebands. Multispectral fluorescence images were taken on the same plants using UV-blue excitation. Through comparison of the 550 and 690 nm fluorescence images, the detection of disease was clearly possible. Fraction of pixels in one image, recognized as diseased, was set as final fluorescence disease variable and called
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