Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

A Deep Learning Model for Improving the Rice Plant Disease Detection Performance


Affiliations
1 Department of Computer Science and Engineering, Sage University, India
     

   Subscribe/Renew Journal


Rice is one of the most utilized grains in India. It is a seasonal crop which mostly grows between June to October. This crop mostly grows in natural conditions and its production has a significant influence on different diseases in the plant. Early stage detection of diseases can help in improving the production. In this paper, an analysis and study on deep learning models for getting accurate rice plant disease detection is presented. In this context, first the recent contributions on detecting the diseases by analysing the plant leaf images are reviewed. Then, a comparison among sequential model and 2D-CNN model has been performed. The experimental analysis demonstrates that 2D-CNN outperforms as compared to the simple sequential model. The experiments are extended by including the different image feature selection models. In order to extract features, sobel based edge detection, Local Binary Pattern (LBP) based texture analysis and their combinations i.e. sobel and LBP, Sobel, LBP and color, and a combination of color and sobel are used. The experiments are performed on Kaggle based rice plant disease detection dataset and the performance in terms of precision, recall, f1-score and accuracy has been measured. The experimental evaluation highlights two major points (1) the CNN does not require additional features for better classification consequences (2) the highly trained models are able to respond faster as compared to less trained models. Based on the obtained performance, a more accurate model for plant disease detection is designed.

Keywords

Plant Disease Detection, Machine Learning, Image Processing, Food Security, Early Disease Detection
Subscription Login to verify subscription
User
Notifications
Font Size

  • FAO, “FAO in India”, Available at http://www.fao.org/india/fao-in-india/india-at-a-glance/en/, Accessed at 2021.
  • K. Golhani, S.K. Balasundram, G. Vadamalai and B. Pradhan, “A Review of Neural Networks in Plant Disease Detection using Hyperspectral Data”, Information Processing in Agriculture, Vol. 5, pp. 354-371, 2018.
  • S. Sladojevic, M. Arsenovic, A. Anderla, D. Culibrk and D. Stefanovic, “Deep Neural Networks Based Recognition of Plant Diseases by Leaf Image Classification”, Computational Intelligence and Neuroscience, Vol. 2016, pp. 1-11, 2016.
  • U. Shruthi, V. Nagaveni and B.K. Raghavendra, “A Review on Machine Learning Classification Techniques for Plant Disease Detection”, Proceedings of International Conference on Advanced Computing and Communication Systems, pp. 1-13, 2019.
  • Q.H. Cap, H. Tani, H. Uga, S. Kagiwada and H. Iyatomi, “Super-Resolution for Practical Automated Plant Disease Diagnosis System”, Proceedings of International Conference on Advanced Computing, pp. 1-13, 2019.
  • E. Fujita and Y. Kawasaki, “Basic Investigation on a Robust and Practical Plant Diagnostic System”, Proceedings of International Conference on Machine Learning and Applications, pp. 1-8, 2016.
  • P. Sharma, Y.P.S. Berwal and W. Ghai, “Performance Analysis of Deep Learning CNN Models for Disease Detection in Plants using Image Segmentation”, Information Processing in Agriculture, Vol. 34, pp. 2214-3173, 2019.
  • A. Ramcharan, K. Baranowski, P. McCloskey, B. Ahmed, J. Legg and D.P. Hughes, “Deep Learning for Image-Based Cassava Disease Detection”, Vol. 8, No. 2, pp. 1-13, 2017.
  • K.P. Ferentinos, “Deep Learning Models for Plant Disease Detection and Diagnosis”, Computers and Electronics in Agriculture, Vol. 145, pp. 311-318, 2018.
  • E.C. Too, L. Yujian, S. Njuki and L. Yingchun, “A Comparative Study of Fine-Tuning Deep Learning Models for Plant Disease Identification”, Computers and Electronics in Agriculture, Vol. 143, pp. 252-264, 2018.
  • G. Wang, Y. Sun and J. Wang, “Automatic Image-Based Plant Disease Severity Estimation using Deep Learning”, Computational Intelligence and Neuroscience, Vol. 2017, pp. 1-8, 2017.
  • D.O. Shamkuwar, G. Thakre, A.R. More, K.S. Gajakosh and M.O. Yewale, “An Expert System for Plant Disease Diagnosis by using Neural Network”, International Research Journal of Engineering and Technology, Vol. 5, No. 4, pp. 1-13, 2018.
  • S. Ramesh, R. Hebbar, M. Niveditha, R. Pooja, N.P. Bhat, N. Shashank and P.V. Vinod, “Plant Disease Detection using Machine Learning”, Proceedings of International Conference on Design Innovations for 3Cs Compute Communicate Control, pp. 1-12, 2018.
  • S.D. Khirade and A.B. Patil, “Plant Disease Detection using Image Processing”, Proceedings of International Conference on Computing Communication Control and Automation, pp. 1-13, 2015.
  • V. Singh and A.K. Misra, “Detection of Plant Leaf Diseases using Image Segmentation and Soft Computing Techniques”, Information Processing in Agriculture, Vol. 4, pp. 41-49, 2017.
  • M. Islam, A. Dinh, K. Wahid and P. Bhowmik, “Detection of Potato Diseases using Image Segmentation and Multiclass Support Vector Machine”, Proceedings of International Conference on Electrical and Computer Engineering, pp. 1-13, 2017.
  • D. Singh, N. Jain, P. Jain, P. Kayal, S. Kumawat and N. Batra, “PlantDoc: A Dataset for Visual Plant Disease Detection”, Proceedings of International Conference on Computing Applications, pp. 5-7, 2020.
  • S.S. Kumar and B.K. Raghavendra, “Diseases Detection of Various Plant Leaf Using Image Processing Techniques: A Review”, Proceedings of International Conference on Advanced Computing and Communication Systems, pp. 1-13, 2019.
  • S.A. Nandhini, R. Hemalatha, S. Radha and K. Indumathi, “Web Enabled Plant Disease Detection System for Agricultural Applications using WMSN”, Wireless Personal Communications, Vol. 98, pp. 1-13, 2019.
  • H. Pourazar, F. Samadzadegan and F.D. Javan, “Aerial Multispectral Imagery for Plant Disease Detection:
  • Radiometric Calibration Necessity Assessment”, European Journal of Remote Sensing, Vol. 52, No. 3, pp. 17-31, 2019.
  • J.P. Shah, H.B. Prajapati and V.K. Dabhi, “A Survey on Detection and Classification of Rice Plant Diseases”, Proceedings of International Conference on Advanced Computing and Communications, pp. 1-13, 2016.
  • P.S. Garud and R. Devi, “Detection of Diseases on Plant Leaf with the Help of Image Processing”, International Journal of Engineering Technology Science and Research, Vol. 4, No. 8, pp. 1-13, 2017.
  • M. Ray, A. Ray, S. Dash, A. Mishra, K.G. Achary, S. Nayak and S. Singh, “Fungal Disease Detection in Plants: Traditional Assays, Novel Diagnostic Techniques and Biosensors”, Biosensors and Bioelectronics, Vol. 87, pp. 708-723, 2017.
  • G. Dhingra, V. Kumar and H. D. Joshi, “Study of Digital Image Processing Techniques for Leaf Disease Detection and Classification”, Multimedia Tools and Applications, Vol. 78, pp. 1-18, 2017.
  • X. Nie, L. Wang, H. Ding and M. Xu, “Strawberry Verticillium Wilt Detection Network Based on Multi-Task Learning and Attention”, Proceedings of International Conference on Advanced Computing, pp. 1-17, 2017.
  • G. Owomugisha, E. Nuwamanya, J.A. Quinn, M. Biehl and E. Mwebaze, “Early Detection of Plant Diseases using Spectral Data”, Proceedings of International Conference on Computing Machinery, pp. 7-9, 2020.
  • S. Iniyan, R. Jebakumar, P. Mangalraj, M. Mohit and A. Nanda, “Plant Disease Identification and Detection using Support Vector Machines and Artificial Neural Networks”, Advances in Intelligent Systems and Computing, Vol. 1056, 2020.
  • K.P. Panigrahi, H. Das, A.K. Sahoo and S.C. Moharana, “Maize Leaf Disease Detection and Classification using Machine Learning Algorithms”, Advances in Intelligent Systems and Computing, Vol. 1119, 2020.
  • Rice Leaf Disease, Available at https://www.kaggle.com/vbookshelf/rice-leaf-diseases, Accessed at 2022.
  • G. Shrivastava and H. Patidar, “Rice Plant Disease Identification Decision Support Model using Machine Learning”, ICTACT Journal on Soft Computing, Vol. 12, No. 3, pp. 2619-2627, 2022

Abstract Views: 168

PDF Views: 2




  • A Deep Learning Model for Improving the Rice Plant Disease Detection Performance

Abstract Views: 168  |  PDF Views: 2

Authors

Gaurav Shrivastava
Department of Computer Science and Engineering, Sage University, India
Kuntal Barua
Department of Computer Science and Engineering, Sage University, India

Abstract


Rice is one of the most utilized grains in India. It is a seasonal crop which mostly grows between June to October. This crop mostly grows in natural conditions and its production has a significant influence on different diseases in the plant. Early stage detection of diseases can help in improving the production. In this paper, an analysis and study on deep learning models for getting accurate rice plant disease detection is presented. In this context, first the recent contributions on detecting the diseases by analysing the plant leaf images are reviewed. Then, a comparison among sequential model and 2D-CNN model has been performed. The experimental analysis demonstrates that 2D-CNN outperforms as compared to the simple sequential model. The experiments are extended by including the different image feature selection models. In order to extract features, sobel based edge detection, Local Binary Pattern (LBP) based texture analysis and their combinations i.e. sobel and LBP, Sobel, LBP and color, and a combination of color and sobel are used. The experiments are performed on Kaggle based rice plant disease detection dataset and the performance in terms of precision, recall, f1-score and accuracy has been measured. The experimental evaluation highlights two major points (1) the CNN does not require additional features for better classification consequences (2) the highly trained models are able to respond faster as compared to less trained models. Based on the obtained performance, a more accurate model for plant disease detection is designed.

Keywords


Plant Disease Detection, Machine Learning, Image Processing, Food Security, Early Disease Detection

References