Detection of Rice Plant Disease Using Deep Learning Techniques

Authors

  • S. Babu Department of Computing Technologies, SRM Institute of Science and Technology, Kattankulathur, Chennai, India
  • Maravarman M Department of Computer Science and Engineering, B V Raju Institute of Technology, Narsapur, Medak, Telangana, India
  • Pitchai R Department of Computer Science and Engineering, B V Raju Institute of Technology, Narsapur, Medak, Telangana, India

DOI:

https://doi.org/10.13052/jmm1550-4646.18314

Keywords:

Rice plant disease, classification, pattern recognition, Convolutional Neural Network

Abstract

Deep learning has recently grown a lot of interest as a way to create a fast, efficient, and reliable image identification and categorization system. India, being one of the world’s most important rice producers and consumers, relies heavily on rice to propel its economy and provide its food needs. In the crop protective device, early and precise diagnosis of plant diseases is critical. Traditionally, identification was done either through visual inspection or laboratory testing. It is critical to identify any disease early and perform the necessary treatment to the damaged plants in order to guarantee the rice plants’ healthy and proper growth. Because disease detection by hand takes a long time and requires a lot of effort, having an automated system is unavoidable. A rice plant disease identification method depends on deep learning methodologies are presented in this research. Leaf smut, bacterial leaf blight, sheat blight, and brown spot diseases are four of the most frequent rice plant diseases identified in this study. The rice plant disease is identified and recognized using deep learning algorithms. This method of early detection of rice diseases could be utilized as a preventative tool as well as an early detection. The proposed approach provides enhanced accuracy of 99.45% and it is compared with the existing state-of-the-art approaches.

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Author Biographies

S. Babu, Department of Computing Technologies, SRM Institute of Science and Technology, Kattankulathur, Chennai, India

S. Babu is a researcher at SRM Institute of Science and Technology, Kattankulathur. His current research focus is on Networking, Cloud Computing, and Software Engineering. He has completed Bachelor, Masters, and Ph.D. in Computer Science Engineering from Anna University, Chennai India.

Maravarman M, Department of Computer Science and Engineering, B V Raju Institute of Technology, Narsapur, Medak, Telangana, India

M. Maravarman received his M.E in Computer and Communication, Anna University, Chennai. Currently, he is pursuing a Ph.D. in Computer Science and Engineering from SRM University, Chennai. His area of interest includes Networking and Cloud Computing.

Pitchai R, Department of Computer Science and Engineering, B V Raju Institute of Technology, Narsapur, Medak, Telangana, India

R. Pitchai is an Associate Professor at the Department of Computer Science and Engineering from the B V Raju Institute of Technology. His current research focus is on Cloud Computing and securing Cloud environments. He holds his B.E. degree in Computer Science and Engineering from Anna University, India in 2005 and M.Tech in Software Engineering at Bharathidasan University, Trichy in 2008, and completed Ph.D. in Information and Communication Engineering at Anna University Chennai. He has published around 25 papers in various reputed journals.

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Published

2022-02-04

How to Cite

Babu, S. ., Maravarman, M. ., & Pitchai, R. . (2022). Detection of Rice Plant Disease Using Deep Learning Techniques. Journal of Mobile Multimedia, 18(03), 757–770. https://doi.org/10.13052/jmm1550-4646.18314

Issue

Section

Computer Vision and its Application in Agriculture