Tomato Leaf Disease Recognition on Leaf Images Based on Fine-Tuned Residual Neural Networks

Author:

Kanda Paul ShekonyaORCID,Xia KewenORCID,Kyslytysna Anastasiia,Owoola Eunice OluwabunmiORCID

Abstract

Humans depend heavily on agriculture, which is the main source of prosperity. The various plant diseases that farmers must contend with have constituted a lot of challenges in crop production. The main issues that should be taken into account for maximizing productivity are the recognition and prevention of plant diseases. Early diagnosis of plant disease is essential for maximizing the level of agricultural yield as well as saving costs and reducing crop loss. In addition, the computerization of the whole process makes it simple for implementation. In this paper, an intelligent method based on deep learning is presented to recognize nine common tomato diseases. To this end, a residual neural network algorithm is presented to recognize tomato diseases. This research is carried out on four levels of diversity including depth size, discriminative learning rates, training and validation data split ratios, and batch sizes. For the experimental analysis, five network depths are used to measure the accuracy of the network. Based on the experimental results, the proposed method achieved the highest F1 score of 99.5%, which outperformed most previous competing methods in tomato leaf disease recognition. Further testing of our method on the Flavia leaf image dataset resulted in a 99.23% F1 score. However, the method had a drawback that some of the false predictions were of tomato early light and tomato late blight, which are two classes of fine-grained distinction.

Funder

the National Natural Science Foundation of China

the Hebei Province Natural Science Foundation

Key Research and Development Project from Hebei Province

Publisher

MDPI AG

Subject

Plant Science,Ecology,Ecology, Evolution, Behavior and Systematics

Reference89 articles.

1. Hughes, D.P., and Salathe, M. An Open Access Repository of Images on Plant Health to Enable the Development of Mobile Disease Diagnostics. arXiv, 2015.

2. Plant Pests and Diseases. 2021.

3. FAOSTAT. 2021.

4. Panno, S., Davino, S., Caruso, A.G., Bertacca, S., Crnogorac, A., Mandić, A., Noris, E., and Matić, S. A Review of the Most Common and Economically Important Diseases That Undermine the Cultivation of Tomato Crop in the Mediterranean Basin. Agronomy, 2021. 11.

5. Over View of Septoria Diseases on Different Crops and Its Management;Das;Int. J. Agric. Environ. Biotechnol.,2020

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