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ISSN: 1023-5086

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ISSN: 1023-5086

Scientific and technical

Opticheskii Zhurnal

A full-text English translation of the journal is published by Optica Publishing Group under the title “Journal of Optical Technology”

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DOI: 10.17586/1023-5086-2018-85-07-69-75

Early identification of Curvularia Lunata based on hyperspectral imaging

For Russian citation (Opticheskii Zhurnal):

Jing Xu, Teng Miao, Yuncheng Zhou, Hanbing Deng, Ping Song, Yubo Zhang, Kai Song Early identification of Curvularia Lunata based on hyperspectral imaging (Ранняя идентификация Curvularia Lunata с использованием гиперспектральных изображений) [на англ. яз.] // Оптический журнал. 2018. Т. 85. № 7. С. 69–75. http://doi.org/10.17586/1023-5086-2018-85-07-69-75

 

Jing Xu, Teng Miao, Yuncheng Zhou, Hanbing Deng, Ping Song, Yubo Zhang, Kai Song Early identification of Curvularia Lunata based on hyperspectral imaging (Ранняя идентификация Curvularia Lunata с использованием гиперспектральных изображений) [in English] // Opticheskii Zhurnal. 2018. V. 85. № 7. P. 69–75. http://doi.org/10.17586/1023-5086-2018-85-07-69-75  

For citation (Journal of Optical Technology):

Jing Xu, Teng Miao, Yuncheng Zhou, Hanbing Deng, Ping Song, Yubo Zhang, and Kai Song, "Early identification of Curvularia lunata based on hyperspectral imaging," Journal of Optical Technology. 85(7), 432-436 (2018). https://doi.org/10.1364/JOT.85.000432

Abstract:

With the popularizing of close planting and high fertilizer technology, the occurrence of Curvularia Lunata has been increasing year after year, has caused a very serious harm. The early identification method of the disease is of great significance to reduce the environmental pollution and improve the quality of crops. In order to identify the disease quickly and non-damage, we studied on maize leaves, then propose an early identification of Curvularia Lunata method based on hyperspectral imaging technology. The experiment leaves are in vitro inoculation, at 11 time's points after inoculation (2, 4, 6, 8, 12, 24, 32, 40, 48, 60, 72 hours respectively), we collect hyperspectral images in the visible and near infrared bands of normal leaves and inoculation disease leaves respectively by hyperspectral imaging system. By comparative analysis between two types of leaves, small chlorotic spots are been found after inoculation with 48 hours, spectral information has obvious difference. Based on mixed distance method, we find that the best bands of identification Curvularia Lunata are 465.1,550.7, 681.4 nm. We use these bands as the input quantity and build back-propagation neural network detection model. We make experiments on samples (160 samples for each time point above mentioned) by the model, the accuracy rate of identification inoculation leaves is above 97.5%. The result show that, the BP neural network detection model with characteristic bands can identification Curvularia Lunata quickly and non-destructive. It provides a new way for early detection of maize diseases.

Keywords:

hyperspectral imaging technology, Curvularia Lunata, characteristic band, early identification, non-destruction detection

Acknowledgements:

This research was financially supported by Natural Science Foundation of China (31501217, 31601218, 31701318).

OCIS codes: 100.4145, 150.1135, 170.0110, 300.6280, 300.6550, 000.5490

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