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Smart crop disease monitoring system in IoT using optimization enabled deep residual network
by
Maratha, Priti
, Shah, Mohd Asif
, Saini, Ashish
, Gill, Nasib Singh
, Gulia, Preeti
, Tiwari, Anoop Kumar
in
631/114
/ 631/449
/ 639/166
/ Algorithms
/ Automation
/ Crop diseases
/ Crops, Agricultural
/ Deep Learning
/ Deep residual network
/ Humanities and Social Sciences
/ Internet of Things
/ multidisciplinary
/ Optimization
/ Plant Diseases
/ Plant extracts
/ Science
/ Science (multidisciplinary)
/ Smart crop disease monitoring
/ Spider local image features
2025
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Smart crop disease monitoring system in IoT using optimization enabled deep residual network
by
Maratha, Priti
, Shah, Mohd Asif
, Saini, Ashish
, Gill, Nasib Singh
, Gulia, Preeti
, Tiwari, Anoop Kumar
in
631/114
/ 631/449
/ 639/166
/ Algorithms
/ Automation
/ Crop diseases
/ Crops, Agricultural
/ Deep Learning
/ Deep residual network
/ Humanities and Social Sciences
/ Internet of Things
/ multidisciplinary
/ Optimization
/ Plant Diseases
/ Plant extracts
/ Science
/ Science (multidisciplinary)
/ Smart crop disease monitoring
/ Spider local image features
2025
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Smart crop disease monitoring system in IoT using optimization enabled deep residual network
by
Maratha, Priti
, Shah, Mohd Asif
, Saini, Ashish
, Gill, Nasib Singh
, Gulia, Preeti
, Tiwari, Anoop Kumar
in
631/114
/ 631/449
/ 639/166
/ Algorithms
/ Automation
/ Crop diseases
/ Crops, Agricultural
/ Deep Learning
/ Deep residual network
/ Humanities and Social Sciences
/ Internet of Things
/ multidisciplinary
/ Optimization
/ Plant Diseases
/ Plant extracts
/ Science
/ Science (multidisciplinary)
/ Smart crop disease monitoring
/ Spider local image features
2025
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Smart crop disease monitoring system in IoT using optimization enabled deep residual network
Journal Article
Smart crop disease monitoring system in IoT using optimization enabled deep residual network
2025
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Overview
The Internet of Things (IoT) has recently attracted substantial interest because of its diverse applications. In the agriculture sector, automated methods for detecting plant diseases offer numerous advantages over traditional methods. In the current study, a new model is developed to categorize plant diseases within an IoT network. The IoT network is simulated for monitoring crop diseases. Routing is performed with Henry Gas Chicken Swarm Optimization (HGCSO), which is designed by integrating Henry Gas Solubility Optimization (HGSO) and Chicken Swarm Optimization (CSO). The fitness parameters of the model include delay, energy, distance, and link lifetime (LLT). At the Base Station (BS), plant disease categorization is performed by collecting plant leaf images. Preprocessing is done on the input images using median filtering. Various features, such as Histogram of Oriented Gradient (HoG), statistical features, Spider Local Image Features (SLIF), and Local Ternary Patterns (LTP) are extracted. Plant disease categorization is carried out using a Deep Residual Network (DRN), which is trained using the developed Caviar Henry Gas Chicken Swarm Optimization (CHGCSO) that combines the CAViaR model with HGCSO. Comparative results show an accuracy of 94.3%, a maximum sensitivity of 93.3%, a maximum specificity of 92%, and an F1-score of 93%, indicating that the CHGCSO-based DRN outperforms existing methods. Graphic Abstract
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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