2022
DOI: 10.1109/access.2022.3159678
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End-to-End Deep Learning Model for Corn Leaf Disease Classification

Abstract: Plant diseases compose a great threat to global food security. However, the rapid identification of plant diseases remains challenging and time-consuming. It requires experts to accurately identify if the plant is healthy or not and identify the type of infection. Deep learning techniques have recently been used to identify and diagnose diseased plants from digital images to help automate plant disease diagnosis and help non-experts identify diseased plants. In this paper, an end-to-end deep learning model is … Show more

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Cited by 95 publications
(33 citation statements)
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“…More specifically, the proposed framework attained an average accuracy value of 99.98% which is higher than other comparative methods. The studies ( Liu et al., 2020 ; Zhang et al., 2021 ; Amin et al., 2022 ) used various deep CNN architectures and the PlantVillage maize disease dataset as transfer learning. Few of them employed the attention method in CNNs to enhance classification accuracy ( Chen et al., 2021 ; Zeng et al., 2022a ; Qian et al., 2022 ; Yin et al., 2022 ).…”
Section: Experiments and Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…More specifically, the proposed framework attained an average accuracy value of 99.98% which is higher than other comparative methods. The studies ( Liu et al., 2020 ; Zhang et al., 2021 ; Amin et al., 2022 ) used various deep CNN architectures and the PlantVillage maize disease dataset as transfer learning. Few of them employed the attention method in CNNs to enhance classification accuracy ( Chen et al., 2021 ; Zeng et al., 2022a ; Qian et al., 2022 ; Yin et al., 2022 ).…”
Section: Experiments and Resultsmentioning
confidence: 99%
“…This approach showed the highest prediction accuracy of 97.41% using ResNet50; however, the performance is limited over the noisy samples. In ( Amin et al., 2022 ), the authors developed a model using the EfficientNetB0, and DenseNet121 network to compute deep keypoints for the categorization of maize leaf disease. They fused the extracted features to obtain a more descriptive representation before performing classification.…”
Section: Related Workmentioning
confidence: 99%
“…Author achieved an accuracy of 96.75% with DRNN. On a publicly available dataset for plant disease classification, [17] the author used CNN on plant leaf images to identify healthy and unhealthy leaf images. The findings included image segmentation, LBP, and grab cut approaches, among other image processing techniques.…”
Section: Related Workmentioning
confidence: 99%
“…The proposed model was tested on a small dataset of fewer than 100 photos. The author [17] used EfficientB0 and DenseNet121 to find out the disease in corn. The author combined the features of EfficientB0 and DenseNet121 to find out the complex feature of the infected corn leaf images.…”
Section: Related Workmentioning
confidence: 99%
“…However, little details are provided about the experimental setup in terms of how randomness in splitting the data is managed and how to guard against lucky choices. Recently, Amin et al [ 23 ] fused features from two CNN models, EfficientNetB0, and DenseNet121, to produce a more representative feature map and hence superior performance. They experimented with multiple fusion techniques and compared the performance of their approach, which produced a superior accuracy of 98.56%, to that of the ResNet152 and Inceptionv3 models.…”
Section: Introductionmentioning
confidence: 99%