Hyper-spectral NIR and MIR data and optimal wavebands for detection of
apple tree diseases
- URL: http://arxiv.org/abs/2004.02325v3
- Date: Fri, 24 Apr 2020 07:42:03 GMT
- Title: Hyper-spectral NIR and MIR data and optimal wavebands for detection of
apple tree diseases
- Authors: Dmitrii Shadrin (1), Mariia Pukalchik (1), Anastasia Uryasheva (2 and
3), Evgeny Tsykunov (2), Grigoriy Yashin (2), Nikita Rodichenko (3), Dzmitry
Tsetserukou (2) ((1) Center for Computational and Data-Intensive Science and
Engineering, Skolkovo Institute of Science and Technology, (2) Space Center,
Skolkovo Institute of Science and Technology, (3) Tsuru Robotics (tsapk
llc.))
- Abstract summary: Plant diseases can lead to dramatic losses in yield and quality of food.
Apple scab, moniliasis, and powdery mildew are the most significant apple tree diseases worldwide.
This research proposes a modern approach for analyzing the spectral data in Near-Infrared and Mid-Infrared ranges of the apple tree diseases.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Plant diseases can lead to dramatic losses in yield and quality of food,
becoming a problem of high priority for farmers. Apple scab, moniliasis, and
powdery mildew are the most significant apple tree diseases worldwide and may
cause between 50% and 60% in yield losses annually; they are controlled by
fungicide use with huge financial and time expenses. This research proposes a
modern approach for analyzing the spectral data in Near-Infrared and
Mid-Infrared ranges of the apple tree diseases at different stages. Using the
obtained spectra, we found optimal spectral bands for detecting particular
disease and discriminating it from other diseases and healthy trees. The
proposed instrument will provide farmers with accurate, real-time information
on different stages of apple tree diseases, enabling more effective timing, and
selecting the fungicide application, resulting in better control and increasing
yield. The obtained dataset, as well as scripts in Matlab for processing data
and finding optimal spectral bands, are available via the link:
https://yadi.sk/d/ZqfGaNlYVR3TUA
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