Publication | Open Access
Monitoring Tomato Leaf Disease through Convolutional Neural Networks
88
Citations
55
References
2023
Year
Tomato Leaf DiseasesConvolutional Neural NetworkImage ClassificationImage AnalysisMachine LearningData ScienceTomato LeavesEngineeringGenerative Adversarial NetworkCrop ProtectionAgricultural EconomicsConvolutional Neural NetworksPlant PathologyDeep LearningTomato Leaf DiseasePlant Health
Agriculture plays an essential role in Mexico’s economy. The agricultural sector has a 2.5% share of Mexico’s gross domestic product. Specifically, tomatoes have become the country’s most exported agricultural product. That is why there is an increasing need to improve crop yields. One of the elements that can considerably affect crop productivity is diseases caused by agents such as bacteria, fungi, and viruses. However, the process of disease identification can be costly and, in many cases, time-consuming. Deep learning techniques have begun to be applied in the process of plant disease identification with promising results. In this paper, we propose a model based on convolutional neural networks to identify and classify tomato leaf diseases using a public dataset and complementing it with other photographs taken in the fields of the country. To avoid overfitting, generative adversarial networks were used to generate samples with the same characteristics as the training data. The results show that the proposed model achieves a high performance in the process of detection and classification of diseases in tomato leaves: the accuracy achieved is greater than 99% in both the training dataset and the test dataset.
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