Automation of Plant Diseases Detection through Machine learning Technologies

Authors

  • Abhishek Pandey SCSVMV University
  • V. Ramesh SCSVMV University

Keywords:

Plant disease, deep learning, Support vector machine (SVM), Convolutional neural networks

Abstract

Plants are constantly exposure to pathogens such as virus, bacteria and fungi. Plant diseases caused by pathogens lead significant crop yield loss globally. Numerous researchers have been studying how to reduce the damage of plant diseases. Plant disease has long been one of the major threats to agriculture security in India because it dramatically reduces the crop yield and compromises its quality. Pests and Diseases results in the destruction of crops or part of the plant resulting in decreased food production leading to food insecurity. Accurate and precise diagnosis of diseases has been a significant challenge. Traditionally, identification of plant diseases has relied on human annotation by visual inspection. Plant diseases affect the growth of their respective species; therefore their early identification is very important. Modern technological approaches such as machine learning and deep learning algorithm have been employed to increase the recognition rate and the accuracy of the results. Various researches have taken place under the field of machine learning for plant disease detection and diagnosis, such traditional machine learning approach being random forest, artificial neural network, support vector machine(SVM), fuzzy logic, K-means method, Convolutional neural networks etc. In this paper a comparative study on machine learning techniques for plant disease detection is performed. In this survey it observed that Convolutional Neural Network gives high accuracy and detects more number of diseases of multiple crops.


References

Agarwal, M., Singh, A., Arjaria, S., Sinha, A., & Gupta, S. (2020). ToLeD: Tomato leaf disease detection using convolutional neural network. Procedia Computer Science, 167, 293–301. https://doi.org/10.1016/j.procs.2020.03.184

Agarwal, N., Singhai, J., & Agarwal, D. K. (2017). Grape leaf disease detection and classification using multi-class support vector machine. Proceedings, 238–244.

Al Bashish, D., Braik, M., & Bani-Ahmad, S. (2010). A framework for detection and classification of plant leaf and stem diseases. Proceedings, 113–118.

Asefpour Vakilian, K., & Massah, J. (2013). An artificial neural network approach to identify fungal diseases of cucumber (Cucumis sativus L.) plants using digital image processing. Archives of Phytopathology and Plant Protection, 46(13), 1580–1588. https://doi.org/10.1080/03235408.2012.756715

Barbedo, J. C. A. (2019). Plant disease identification from individual lesions and spots using deep learning. Biosystems Engineering, 180, 96–107. https://doi.org/10.1016/j.biosystemseng.2018.10.012

Hossain, M. S., Mou, R. M., Hasan, M. M., Chakraborty, S., & Razzak, M. A. (2018). Recognition and detection of tea leaf’s diseases using support vector machine. Proceedings, 150–154.

Hu, G., Wu, H., Zhang, Y., & Wan, M. (2019). A low-shot learning method for tea leaf’s disease identification. Computers and Electronics in Agriculture, 163, 104852. https://doi.org/10.1016/j.compag.2019.104852

Kamal, K. C., Yin, Z., Wu, M., & Wu, Z. (2019). Depthwise separable convolution architectures for plant disease classification. Computers and Electronics in Agriculture, 165, 104948. https://doi.org/10.1016/j.compag.2019.104948

Kamilaris, A., & Prenafeta-Boldú, F. X. (2018). Deep learning in agriculture: A survey. Computers and Electronics in Agriculture, 147, 70–90. https://doi.org/10.1016/j.compag.2018.02.016

Kaur, S., Pandey, S., & Goel, S. (2018). Semiautomatic leaf disease detection and classification system for soybean culture. IET Image Processing, 12(6), 1038–1048. https://doi.org/10.1049/iet-ipr.2017.0781

Liang, S., & Zhang, W. (2020). Accurate image recognition of plant diseases based on multiple classifiers integration. In Y. Jia, J. Du, & W. Zhang (Eds.), Proceedings of the 2019 Chinese Intelligent Systems Conference (CISC 2019) (Vol. 594, pp. 127–133). Springer. https://doi.org/10.1007/978-981-15-5030-5_16

Pawar, R., & Jadhav, A. (2017). Pomegranate disease detection and classification. Proceedings, 2475–2479.

Platt, J. C., Cristianini, N., & Shawe-Taylor, J. (1999). Large margin DAGs for multiclass classification: Fast training of support vector machines using sequential minimal optimization. MIT Press.

Ramakrishnan, M., & Anselin, N. A. S. (2015). Groundnut leaf disease detection and classification using back propagation algorithm. Proceedings, 0964–0968.

Sambasivam, G., & Opiyo, G. D. (2020). A predictive machine learning application in agriculture: Cassava disease detection and classification with imbalanced dataset using convolutional neural network. Egyptian Informatics Journal. https://doi.org/10.1016/j.eij.2020.01.001

Tyagi, A. C. (2018). Towards a second green revolution. Irrigation and Drainage, 65(4), 388–389. https://doi.org/10.1002/ird.2264

Downloads

Published

2022-06-30

How to Cite

Abhishek Pandey, & V. Ramesh. (2022). Automation of Plant Diseases Detection through Machine learning Technologies. Proceeding of The International Conference of Inovation, Science, Technology, Education, Children, and Health, 2(1), 154–163. Retrieved from https://icistech.org/index.php/icistech/article/view/37

Similar Articles

<< < 1 2 3 4 > >> 

You may also start an advanced similarity search for this article.