Research Article

A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50

Volume: 7 Number: 2 December 18, 2024
EN

A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50

Abstract

Rice is extremely important for individuals and countries, both in terms of nutritional value and financial value. It is necessary to protect such an important plant from diseases and increase the yield. However, early detection of diseases on plant leaves can prevent the spread of this disease and is also very important in terms of treating the plant. Artificial intelligence has become very popular in recent years thanks to its success in terms of disease classification. CNN architectures used in image classification perform very successful work. Within the scope of this study, it is recommended that the diseases on rice leaves be classified using artificial intelligence techniques, without mixing them with each other, with very high accuracy values, and without any problems caused by humans. With this proposed model, a support vector machine-based model is proposed that classifies five (5) of the most common rice diseases with a very high accuracy of %98.

Keywords

References

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Details

Primary Language

English

Subjects

Bioinformatics and Computational Biology (Other)

Journal Section

Research Article

Publication Date

December 18, 2024

Submission Date

June 11, 2024

Acceptance Date

July 20, 2024

Published in Issue

Year 2024 Volume: 7 Number: 2

APA
Bingöl, H., & Aslan, S. (2024). A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50. Journal of Physical Chemistry and Functional Materials, 7(2), 22-26. https://doi.org/10.54565/jphcfum.1499620
AMA
1.Bingöl H, Aslan S. A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50. Journal of Physical Chemistry and Functional Materials. 2024;7(2):22-26. doi:10.54565/jphcfum.1499620
Chicago
Bingöl, Harun, and Serpil Aslan. 2024. “A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50”. Journal of Physical Chemistry and Functional Materials 7 (2): 22-26. https://doi.org/10.54565/jphcfum.1499620.
EndNote
Bingöl H, Aslan S (December 1, 2024) A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50. Journal of Physical Chemistry and Functional Materials 7 2 22–26.
IEEE
[1]H. Bingöl and S. Aslan, “A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50”, Journal of Physical Chemistry and Functional Materials, vol. 7, no. 2, pp. 22–26, Dec. 2024, doi: 10.54565/jphcfum.1499620.
ISNAD
Bingöl, Harun - Aslan, Serpil. “A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50”. Journal of Physical Chemistry and Functional Materials 7/2 (December 1, 2024): 22-26. https://doi.org/10.54565/jphcfum.1499620.
JAMA
1.Bingöl H, Aslan S. A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50. Journal of Physical Chemistry and Functional Materials. 2024;7:22–26.
MLA
Bingöl, Harun, and Serpil Aslan. “A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50”. Journal of Physical Chemistry and Functional Materials, vol. 7, no. 2, Dec. 2024, pp. 22-26, doi:10.54565/jphcfum.1499620.
Vancouver
1.Harun Bingöl, Serpil Aslan. A New Hybrid Method for Classification of Rice Leaf Diseases: SVM+NCA+Resnet50. Journal of Physical Chemistry and Functional Materials. 2024 Dec. 1;7(2):22-6. doi:10.54565/jphcfum.1499620

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