Assessment of plant disease detection by deep learning

Author:

Alpyssov Akan1ORCID,Uzakkyzy Nurgul2ORCID,Talgatbek Ayazbaev3ORCID,Moldasheva Raushan4ORCID,Bekmagambetova Gulmira5ORCID,Yessekeyeva Mnyaura6ORCID,Kenzhaliev Dossym2ORCID,Yerzhan Assel7ORCID,Tolstoy Ailanysh2ORCID

Affiliation:

1. Pavlodar Pedagogical University, Kazakhstan

2. L. N. Gumilyov Eurasian National University, Kazakhstan

3. International Taraz Innovative Institute, Kazakhstan

4. S. Seifullin Kazakh Agrotechnical University , Kazakhstan

5. Kazakh University of Technology and Business, Kazakhstan

6. Esil University, Kazakhstan

7. Almaty University of Power Engineering and Telecommunications named after Gumarbek Daukeyev, Kazakhstan

Abstract

Plant disease and pest detection machines were originally used in agriculture and have, to some extent, replaced traditional visual identification. Plant diseases and pests are important determinants of plant productivity and quality. Plant diseases and pests can be identified using digital image processing. According to the difference in the structure of the network, this study presents research on the detection of plant diseases and pests based on three aspects of the classification network, detection network, and segmentation network in recent years, and summarizes the advantages and disadvantages of each method. A common data set is introduced and the results of existing studies are compared. This study discusses possible problems in the practical application of plant disease and pest detection based on deep learning. Conventional image processing algorithms or manual descriptive design and classifiers are often used for traditional computer vision-based plant disease and pest detection. This method usually uses various characteristics of plant diseases and pests to create an image layout and selects a useful light source and shooting angle to produce evenly lit images. The purpose of this work is to identify a group of pests and diseases of domestic and garden plants using a mobile application and display the final result on the screen of a mobile device. In this work, data from 38 different classes were used, including diseased and healthy leaf images of 13 plants from plantVillage. In the experiment, Inception v3 tends to consistently improve accuracy with an increasing number of epochs with no sign of overfitting and performance degradation. Keras with Theano backend used to teach architectures

Publisher

Private Company Technology Center

Subject

Applied Mathematics,Electrical and Electronic Engineering,Management of Technology and Innovation,Industrial and Manufacturing Engineering,Computer Science Applications,Mechanical Engineering,Energy Engineering and Power Technology,Control and Systems Engineering,Food Science,Environmental Chemistry

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Enhancing the Professional Skills of Future Biologists Through Laboratory Training;Journal of Advanced Academics;2024-05-27

2. An Abnormal Detection and Early Warning System for Sugarcane Diseases Based on Unsupervised Learning;2023 5th International Conference on Applied Machine Learning (ICAML);2023-07-21

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