Journal Article10.11591/ijeecs.v33.i3.pp1942-1949
An ensemble deep learning model for automatic classification of cotton leaves diseases
Hirenkumar Kukadiya,Nidhi Arora,Divyakant Meva,Shilpa Srivastava +3 more
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TL;DR: This paper presents exhaustive experimental evaluations on ensemble model to tune hyper-parameters named learning rate, optimizer and no of epochs, which can be directly utilized while employing the ensemble model for cotton plant leaves disease detection and prediction.
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Abstract: Cotton plant (Gossypium herbaceum), is one of the significant fiber crop grown worldwide. However, the crop is quite prone to leaves diseases, for which deep learning (DL) techniques can be utilized for early disease prediction and prevent stakeholders from losing the harvest. The objective of this paper is to develop a novel ensemble based deep convolutional neural network (DCNN) model developed on two base pretrained models named: VGG16 and InceptionV3 for early detection of cotton leaves diseases. The proposed ensemble model trained on cotton leaves dataset reports higher training and testing prediction accuracies as compared to the base pretrained models. Given that, deep learning architectures have hyper-parameters, this paper presents exhaustive experimental evaluations on ensemble model to tune hyper-parameters named learning rate, optimizer and no of epochs. The suggested hyper-parameter settings can be directly utilized while employing the ensemble model for cotton plant leaves disease detection and prediction. With suggested hyper-parameters settings of learning rate 0.0001, 20 epochs and stochastic gradient descent (SGD) optimizer, ensemble model reported training and testing accuracies of 98% and 95% respectively, which was higher than the training and testing accuracies of VGG16 and InceptionV3 pretrained DCNN models.
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Citations
An Advanced Deep Learning Approach for Precision Diagnosis of Cotton Leaf Diseases: A Multifaceted Agricultural Technology Solution
A. Nagarjun,N. Manju,Abdulbasit A. Darem,S Siddesha,Abdulsamad Ebrahim Yahya,Asma A. Alhashmi +5 more
TL;DR: This study proposes a deep learning-based system for precise cotton leaf disease diagnosis, utilizing transfer learning techniques and CNNs to achieve high accuracy (up to 99%) and efficiency in disease detection, revolutionizing agricultural disease management.
A Novel Transformer Model for Accelerated and Efficient Cotton Leaf Disease Identification
Md Mashfiquer Rahman,Mohammad Shahadat Hossain,Kailash Dhakal,Ramesh Poudel,Muhammad Mirajul Islam,Md Redwan Ahmed,Shafiur Rahman +6 more
- 31 Jul 2025
Automated lesion detection in cotton leaf visuals using deep learning
Faisal Akbar,Yassine Aribi,Syed Muhammad Usman,Hamzah Faraj,Ahmed Murayr,Fawaz Alasmari,Shehzad Khalid +6 more
TL;DR: A novel deep learning method using GANs and ensemble-based approach achieves 95% accuracy and 98% F-1 score in automated cotton lesion detection, outperforming existing methods, by addressing class imbalance and dataset limitations.
Classification of cotton leaf disease using YOLOv8 based k-fold cross validation deep learning method for precision agriculture
Kamaldeep Joshi,Yashasvi Yadav,Sahil Hooda,Rainu Nandal,Baljinder Singh,Kashmir Singh,Narendra Tuteja,Ritu Gill,Sarvajeet Singh Gill,Kamaldeep Joshi,Yashasvi Yadav,Sahil Hooda,Rainu Nandal,Baljinder Singh,Kashmir Singh,Narendra Tuteja,Ritu Gill,Sarvajeet Singh Gill +17 more
TL;DR: This study presents a YOLOv8-based deep learning method for cotton leaf disease classification using 10-fold cross-validation, achieving 99.60% Top_1 accuracy, 100% Top_5 accuracy, and high recall, precision, and F1 scores for precise disease recognition in precision agriculture.
Exploring precision agriculture: Employing Grad-CAM for deep neural network in cotton image detection and segmentation with XAI
S. Vidivelli,R. Manikandan,S Magesh,JaeHyuk Cho,Sathishkumar Veerappampalayam Easwaramoorthy,S. Vidivelli,R. Manikandan,S Magesh,JaeHyuk Cho,Sathishkumar Veerappampalayam Easwaramoorthy +9 more
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