Detection of Rice Plant Disease Using Deep Learning Techniques
DOI:
https://doi.org/10.13052/jmm1550-4646.18314Keywords:
Rice plant disease, classification, pattern recognition, Convolutional Neural NetworkAbstract
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.
Downloads
References
Ferentinos, Konstantinos P. “Deep learning models for plant disease detection and diagnosis.” Computers and Electronics in Agriculture 145 (2018): 311–318.
Ramcharan, Amanda, Kelsee Baranowski, Peter McCloskey, Babuali Ahmed, James Legg, and David P. Hughes. “Deep learning for image-based cassava disease detection.” Frontiers in plant science 8 (2017): 1852.
Ashqar, Belal AM, and Samy S. Abu-Naser. “Image-based tomato leaves diseases detection using deep learning.” (2018).
Arsenovic, Marko, Mirjana Karanovic, Srdjan Sladojevic, Andras Anderla, and Darko Stefanovic. “Solving current limitations of deep learning based approaches for plant disease detection.” Symmetry 11, no. 7 (2019): 939.
Amara, Jihen, Bassem Bouaziz, and Alsayed Algergawy. “A deep learning-based approach for banana leaf diseases classification.” Datenbanksysteme für Business, Technologie und Web (BTW 2017)-Workshopband (2017).
Jiang, Peng, Yuehan Chen, Bin Liu, Dongjian He, and Chunquan Liang. “Real-time detection of apple leaf diseases using deep learning approach based on improved convolutional neural networks.” IEEE Access 7 (2019): 59069–59080.
Mohanty, S.P., Hughes, D.P., Salathé, M., 2016. Using deep learning for image-based plant disease detection. Front. Plant Sci. 7 (September), 1–7.
Barbedo, Jayme GA. “Factors influencing the use of deep learning for plant disease recognition.” Biosystems engineering 172 (2018): 84–91.
Rangarajan, Aravind Krishnaswamy, Raja Purushothaman, and Aniirudh Ramesh. “Tomato crop disease classification using pre-trained deep learning algorithm.” Procedia computer science 133 (2018): 1040–1047.
R. Kaur and V. Kaur, “A deterministic approach for disease prediction in plants using deep learning,” 2018.
Nagasubramanian, Koushik, Sarah Jones, Asheesh K. Singh, Arti Singh, Baskar Ganapathysubramanian, and Soumik Sarkar. “Explaining hyperspectral imaging based plant disease identification: 3D CNN and saliency maps.” arXiv preprint arXiv:1804.08831 (2018).
Rajasekar, Vani, J. Premalatha, and K. Sathya. “Cancelable Iris template for secure authentication based on random projection and double random phase encoding.” Peer-to-Peer Networking and Applications 14, no. 2 (2021): 747–762.
Suresh, G., V. Gnanaprakash, and R. Santhiya. “Performance Analysis of Different CNN Architecture with Different Optimisers for Plant Disease Classification.” In 2019 5th International Conference on Advanced Computing & Communication Systems (ICACCS), pp. 916–921. IEEE, 2019.
Verma, Shradha, Anuradha Chug, Amit Prakash Singh, Shubham Sharma, and Puranjay Rajvanshi. “Deep learning-based mobile application for plant disease diagnosis: A proof of concept with a case study on tomato plant.” In Applications of Image Processing and Soft Computing Systems in Agriculture, pp. 242–271. IGI Global, 2019.
Wu, Harvey, Tyr Wiesner-Hanks, Ethan L. Stewart, Chad DeChant, Nicholas Kaczmar, Michael A. Gore, Rebecca J. Nelson, and Hod Lipson. “Autonomous detection of plant disease symptoms directly from aerial imagery.” The Plant Phenome Journal 2, no. 1 (2019): 1–9.
Rathore, N. P. S., and Prasad, L. (2020). Automatic rice plant disease recognition and identification using convolutional neural network. Journal of Critical Reviews, 7(15), 6076–6086.
Sethy, P. K., Barpanda, N. K., Rath, A. K., and Behera, S. K. (2020). Nitrogen deficiency prediction of rice crop based on convolutional neural network. Journal of Ambient Intelligence and Humanized Computing, 11(11), 5703–5711.
Moslehi, F., Haeri, A. An evolutionary computation-based approach for feature selection. J Ambient Intell Human Comput 11, 3757–3769 (2020). https://doi.org/10.1007/s12652-019-01570-1
Matin, M. M. H., Khatun, A., Moazzam, M. G., and Uddin, M. S. (2020). An Efficient Disease Detection Technique of Rice Leaf Using AlexNet. Journal of Computer and Communications, 8(12), 49.
Patidar, S., Pandey, A., Shirish, B. A., and Sriram, A. (2020, July). Rice plant disease detection and classification using deep residual learning. In International Conference on Machine Learning, Image Processing, Network Security and Data Sciences (pp. 278–293). Springer, Singapore.
Xiao, M., Ma, Y., Feng, Z., Deng, Z., Hou, S., Shu, L. and Lu, Z. (2018) Rice Blast Recognition Based on Principal Component Analysis and Neural Network. Computers and Electronics in Agriculture, 154, 482–490. https://doi.org/10.1016/j.compag.2018.08.028
Prajapati, H.B., Shah, J.P. and Dabhi, V.K. (2017) Detection and Classification of Rice Plant Diseases. Intelligent Decision Technologies, 11, 357–373. https://doi.org/10.3233/IDT-170301
Ahmed, K., Shahidi, T.R., Irfanul Alam, S.M. and Momen, S. (2019) Rice Leaf Disease Detection Using Machine Learning Techniques. 2019 International Conference on Sustainable Technologies for Industry 4.0 (STI), Dhaka, 24–25 December, 1–5. https://doi.org/10.1109/STI47673.2019.9068096
Islam, T., Sah, M., Baral, S. and Choudhury, R.R. (2018) A Faster Technique on Rice Disease Detection Using Image Processing of Affected Area in Agro-Field. 2018 Second International Conference on Inventive Communication and Computational Technologies (ICICCT), Coimbatore, 20–21 April 2018, 62–66. https://doi.org/10.1109/ICICCT.2018.8473322
Maniyath, S.R., Vinod, P., Niveditha, M., Pooja, R., Shashank, N., Hebbar, R., et al., (2018) Plant Disease Detection Using Machine Learning. 2018 International Conference on Design Innovations for 3Cs Compute Communicate Control (ICDI3C), Bangalore, 25–28 April 2018, 41–45.