Abstract
For decades, agriculture has been an essential food
source. According to related statics, over 60% of the total earth
population mainly depend on agriculture’s sources for their
primary feed. Unfortunately, one of the disaster problems that
affect badly on agriculture production is plant diseases. There are
about 25% of agriculture production lost annually because of
plant diseases. Late and Early Blight diseases are one of the most
destructive diseases that infect potato crop. Although, the late and
inaccurate detection of plant diseases increases the losing
percentage for the crop. The main approach of our proposed
system is to detect early the plant diseases to decrease the plant’s
production losses by using a diagnosis and detection system based
on the Convolution Neural Network (CNN). We used CNN to
extract the diseases features from the input images of the
supported training dataset for classification purposes. For model
training, 1700 of potato leaf images were used, then the testing
process is done by using approximately 300 images and 100
images for fine tuning and parameters calibration against any
biased data. Our proposed CNN architecture archives 98.2%
accuracy, which is higher compared with other approaches run on
the same dataset.
Publisher
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Subject
Management of Technology and Innovation,General Engineering
Cited by
9 articles.
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