Classification of Tomato Leaf Disease Using a Custom Convolutional Neural Network

Jayesh K. Kokate1*, Sunil Kumar1 and Anant G. Kulkarni2

1Electronics and Communication Department, Kalinga University, Raipur, India.

2Electronics and Telecommunication Department, Siddhivinayak Technical Campus, Shegaon, India.

Corresponding Author E-mail:jayeshkokate18@gmail.com

DOI : http://dx.doi.org/10.12944/CARJ.11.1.28

Article Publishing History

Received: 01 Jan 2023
Accepted: 09 Mar 2023
Published Online: 13 Mar 2023

Review Details

Reviewed by: Dr. K. Vignesh
Second Review by: Dr. B. Sangeetha
Final Approval by: Dr. José Luis da Silva Nunes

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Abstract:

A plant's genetic potential for crop production can only be realised if the plant is healthy. Infected plants produce less than their genetic potential when they are unhealthy and exposed to infection-causing agents of any kind. A disease can have an impact on a plant's metabolism.  Manual checking of plant health is not feasible for anytime. Accurately identifying the disease as soon as it first manifests on the plant is crucial for controlling it in farms. Thus, taking the proper action to stop further crop and yield damage will depend heavily on an automated method of disease identification and precise disease relegation. This paper presents a convolutional neural network (CNN) model for diagnosing tomato leaf diseases. The findings are presented with an emphasis on accuracy as well as loss. About, 14240 numbers of tomato leaf image data representing nine distinct disease classes were utilized to train the model. On average, this classification was found to be 95.53 percent accurate.

Keywords:

Accuracy; Custom CNN; Classification; Leaf; Smart agriculture

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Copy the following to cite this article:

Kokate J. K, Kumar S, Kulkarni A. G. Classification of Tomato Leaf Disease Using a Custom Convolutional Neural Network. Curr Agri Res 2023; 11(1). doi : http://dx.doi.org/10.12944/CARJ.11.1.28

Copy the following to cite this URL:

Kokate J. K, Kumar S, Kulkarni A. G. Classification of Tomato Leaf Disease Using a Custom Convolutional Neural Network. Curr Agri Res 2023; 11(1). Available from: https://bit.ly/428q4x9

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