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Tomato Leaf Disease Detection using Convolution Neural Network


Affiliations
1 Department of Information Technology, Kalyani Government Engineering College, Kalyani- 741235., India
 

Tomato grains are an essential significant, abundant product in the Indian market with high commercial value. Diseases are detrimental to the plant's health, affecting its growth. It is crucial to monitor the condition of the crop for a sustainable farming system. There are many types of tomato diseases that affect the leaves of the crop at an alarming rate. This paper slightly modifies the evolutionary neural network model called lnceptionV3 to detect and classify disease on tomato leaves. The main goal of the proposed work is to find solutions to the problem of tomato leaf disease detection using simple methods while using minimal computing resources to achieve results comparable to the latest technology. Neural network models employ automated feature extraction to classify the input image into the corresponding disease class. This proposed system has achieved an average accuracy of 94-95%, which indicates the feasibility of the neural network approach even in adverse conditions. 

Keywords

leaf disease detection, neural network, convolution, inceptionV3
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  • Prajwala, T. M., Alia, P., Ashritha, K. S.: Chittaragi, N. B., Koolagudi, S. G., Tomato Leaf Disease Detection using Convolutional Neural Networks, Proc. Eleventh International Conference on Contemporary Computing (IC3), 2-4 August, 2018, Noida, India.
  • Bhakat, A., Nandakumar, N. and Rajkumar, S., An enhanced approach for Plant Leaf Disease Detection, Algorithms, Computing and Mathematics Conference, August 19- 20,2021, Chennai, India.
  • Zhao, S., Peng, Y, Liu, J. and Wu, S., Tomato Leaf Disease Diagnosis Based on Improved Convolution Neural Network by Attention Module, Agriculture, Vol. 11, No. 7,p.651,2021.
  • Xie, S., Girshick, R., Dollar, P., Tu, Z., and He, K., Aggregated Residual Transformations for Deep Neural Networks, Computer Vision and Pattern Recognition, arXiv: 1611.05431.
  • Szegedy, C, Liu, W., Jia, Y, Sermanet, P., Reed, S., Anguelov, D., Erhan, D., Vanhoucke, V, and Rabinovich, A., Going Deeper with Convolutions, in Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 1-9, 2015.
  • Krizhevsky, A., Sutskever, I. and Hinton, G. E., Imagenet Classification with Deep Convolutional Neural Networks, in Advances in Neural Information Processing Systems, 2012, pp. 1097-1105.
  • Agarwal, M., Singh, A., Arjaria, S., Sinha, A. and Gupta, S., ToLeD: Tomato Leaf Disease Detection using Convolution Neural Network, International Conference on Computational Intelligence and Data Science (ICCIDS 2019).
  • Wang, Q., Qi, R, Sun, M., Qu, J. and Xue, J., Identification of Tomato Disease Types and Detection of Infected Areas Based on Deep Convolutional Neural Networks and Object Detection Techniques, Computational Intelligence and Neuroscience, Vol. 2019, Article ID 9142753.
  • Krizhevsky, A., Sutskever, I. and Hinton, G. E., Imagenet Classification with Deep Convolutional Neural Networks, Advances in neural information processing systems, 25 (NIPS 2012).
  • Nagamani, H. S. and Sarojadevi, H., Tomato Leaf Disease Detection using Deep Learning Techniques, International Journal of Advanced Computer Science and Applications, Vol. 13, No.1,2022.
  • Gadade, H.D. and Kirange, D.K., Machine Learning Approach towards Tomato Leaf Disease Classification, International Journal of Advanced Trends in Computer Science and Engineering, Vol. 9, No. 1, pp. 490-495,2020.
  • Wu, Y, Xu, L. and Goodman, E. D., Tomato Leaf Disease Identification and Detection Based on Deep Convolutional Neural Network, Intelligent Automation & Soft Computing, Vol. 28, No. 2,2021.
  • Vinaya, P., Kumar, G. S. and Aravind, K. U., Classification of Tomato Plant Leaf Disease Using Neural Network, Proceedings of the International Conference on Innovative Computing & Communication (ICICC), 23 April 2021.
  • Sreelatha, P., Udayakumar, S., Karthick, S., Chowdhary, S., Kavya, K. Ch. and Madiajagan, M., Managing the Tomato Leaf Disease Detection Accuracy Using Computer Vision Based Deep Neural Network, Journal of Contemporary Issues in Business and Government, Vol. 27, No.1, 2021.
  • Elhassouny, A. and Smarandache, R, Smart Mobile Application to Recognize Tomato Leaf Diseases Using Convolutional Neural Networks, IEEE/ ICCSRE 2019,22- 24 July, 2019,Agadir, Morocco.
  • Khurana, J., Sharma, A., Chhabra, H. S. and Nijhawan, R., An Integrated Deep Learning Framework of Tomato Leaf Disease Detection, International Journal of Innovative Technology and Exploring Engineering, Vol. 8, No.11S, 2019.

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  • Tomato Leaf Disease Detection using Convolution Neural Network

Abstract Views: 350  |  PDF Views: 149

Authors

Arnab Nanda Goswami
Department of Information Technology, Kalyani Government Engineering College, Kalyani- 741235., India
Shubhajyoti Das
Department of Information Technology, Kalyani Government Engineering College, Kalyani- 741235., India
Satyendra Nath Mandal
Department of Information Technology, Kalyani Government Engineering College, Kalyani- 741235., India

Abstract


Tomato grains are an essential significant, abundant product in the Indian market with high commercial value. Diseases are detrimental to the plant's health, affecting its growth. It is crucial to monitor the condition of the crop for a sustainable farming system. There are many types of tomato diseases that affect the leaves of the crop at an alarming rate. This paper slightly modifies the evolutionary neural network model called lnceptionV3 to detect and classify disease on tomato leaves. The main goal of the proposed work is to find solutions to the problem of tomato leaf disease detection using simple methods while using minimal computing resources to achieve results comparable to the latest technology. Neural network models employ automated feature extraction to classify the input image into the corresponding disease class. This proposed system has achieved an average accuracy of 94-95%, which indicates the feasibility of the neural network approach even in adverse conditions. 

Keywords


leaf disease detection, neural network, convolution, inceptionV3

References





DOI: https://doi.org/10.21843/reas%2F2022%2F19-28%2F222960