2019
DOI: 10.1016/j.compeleceng.2019.04.011
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Identification of plant leaf diseases using a nine-layer deep convolutional neural network

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Cited by 520 publications
(27 citation statements)
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“…Thus, using CNNs to identify early plant diseases has become a research focus of agricultural informatization. In (Mohanty et al, 2016;Zhang and Wang, 2016;Lu J. et al, 2017;Lu Y. et al, 2017;Khan et al, 2018;Liu et al, 2018;Geetharamani and Pandian, 2019;Ji et al, 2019;Jiang et al, 2019;Liang et al, 2019;Oppenheim et al, 2019;Pu et al, 2019;Ramcharan et al, 2019;Wagh et al, 2019;Zhang et al, 2019a;Zhang et al, 2019b;), CNNs are extensively studied and applied to the diagnosis of plant diseases. According to these studies, CNNs can learn advanced robust features of diseases directly from original images rather than selecting or extracting features manually, which outperform the traditional feature extraction approaches.…”
Section: Introductionmentioning
confidence: 99%
“…Thus, using CNNs to identify early plant diseases has become a research focus of agricultural informatization. In (Mohanty et al, 2016;Zhang and Wang, 2016;Lu J. et al, 2017;Lu Y. et al, 2017;Khan et al, 2018;Liu et al, 2018;Geetharamani and Pandian, 2019;Ji et al, 2019;Jiang et al, 2019;Liang et al, 2019;Oppenheim et al, 2019;Pu et al, 2019;Ramcharan et al, 2019;Wagh et al, 2019;Zhang et al, 2019a;Zhang et al, 2019b;), CNNs are extensively studied and applied to the diagnosis of plant diseases. According to these studies, CNNs can learn advanced robust features of diseases directly from original images rather than selecting or extracting features manually, which outperform the traditional feature extraction approaches.…”
Section: Introductionmentioning
confidence: 99%
“…They experimented on various batch size, epoch, validation folds, and dropout factorization index on CNN. They compared the efficiency of their proposal with popular CNN architectures including AlexNet, VggNet, Inception-v3 and ResNet and reported the superiority of their proposal with rates of 93.00%, 92.00%, and 93.00% for pepper leaf disease identification accuracy, sensitivity, and specificity, respectively [18]. Kurup et al applied conventional CapsNet architecture to the PlantVillage dataset for leaf classification and leaf disease identification tasks.…”
Section: Discussionmentioning
confidence: 99%
“…They iterated their model using different dropout factorization, learning rate, and fully-connected layers. Their most light-weight architecture for plant leaf disease classification was established a CNN with nine layers [18].…”
Section: Introductionmentioning
confidence: 99%
“…It showed an accuracy ranging from 70% to 98% for different models. Geetharamani et al [17] designed a system by considering nine layer deep convolutional neural network. The architecture was taught using 39 different classes from an open dataset of plant leaf images.…”
Section: Techniques Based On Deep Learningmentioning
confidence: 99%