Image Quality Assessment for Foliar Disease Identification (AgroPath)
- URL: http://arxiv.org/abs/2209.12443v1
- Date: Mon, 26 Sep 2022 06:20:35 GMT
- Title: Image Quality Assessment for Foliar Disease Identification (AgroPath)
- Authors: Nisar Ahmed, Hafiz Muhammad Shahzad Asif, Gulshan Saleem and Muhammad
Usman Younus
- Abstract summary: Crop diseases are a major threat to food security and their rapid identification is important to prevent yield loss.
Recent advances in computer vision and increasing penetration of smartphones have paved the way for smartphone-assisted disease identification.
This study was conducted in 2020 at Department of Computer Science and Engineering, University of Engineering and Technology, Lahore, Pakistan to check leaf-based plant disease identification.
- Score: 2.9718407579521675
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Crop diseases are a major threat to food security and their rapid
identification is important to prevent yield loss. Swift identification of
these diseases are difficult due to the lack of necessary infrastructure.
Recent advances in computer vision and increasing penetration of smartphones
have paved the way for smartphone-assisted disease identification. Most of the
plant diseases leave particular artifacts on the foliar structure of the plant.
This study was conducted in 2020 at Department of Computer Science and
Engineering, University of Engineering and Technology, Lahore, Pakistan to
check leaf-based plant disease identification. This study provided a deep
neural network-based solution to foliar disease identification and incorporated
image quality assessment to select the image of the required quality to perform
identification and named it Agricultural Pathologist (Agro Path). The captured
image by a novice photographer may contain noise, lack of structure, and blur
which result in a failed or inaccurate diagnosis. Moreover, AgroPath model had
99.42% accuracy for foliar disease identification. The proposed addition can be
especially useful for application of foliar disease identification in the field
of agriculture.
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