AI-Based Potato Disease Detection Using RNN

Authors

  • Kaliselvam R UG Scholar, Dept. of IT, CSI College of Engineering, The Nilgiris, Tamil Nadu, India. Author
  • Prem UG Scholar, Dept. of IT, CSI College of Engineering, The Nilgiris, Tamil Nadu, India. Author
  • Kumaran UG Scholar, Dept. of IT, CSI College of Engineering, The Nilgiris, Tamil Nadu, India. Author
  • G. Thiagarajan Head of Department, IT, CSI College of Engineering, The Nilgiris, Tamil Nadu, India. Author
  • A.S. Ramakrishnan Assistant Professor, Dept. of IT, CSI College of Engineering, The Nilgiris, Tamil Nadu, India. Author

DOI:

https://doi.org/10.47392/IRJAEH.2025.0246

Keywords:

Potato Disease Detection, RNN, Python, Deep Learning, Image Classification, Smart Agriculture

Abstract

This project presents a smart and simple system to detect potato leaf diseases using Artificial This paper presents an AI-powered system to detect diseases in potato plants using image classification techniques. The model is built using Python and a Recurrent Neural Network (RNN). Potato crops are commonly affected by diseases like early blight and late blight, which reduce crop quality and yield. Manual detection is time-consuming and often inaccurate. Our automated system allows users to take a picture of a potato leaf using a smartphone or camera. The image is then processed by the trained RNN model, which accurately predicts the disease category. The system is affordable, easy to use, and helpful for small and large-scale farmers. Experimental results show over 94% accuracy with fast prediction time. This can help in real-time disease monitoring and smart farming applications.

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Published

2025-04-23

How to Cite

AI-Based Potato Disease Detection Using RNN. (2025). International Research Journal on Advanced Engineering Hub (IRJAEH), 3(04), 1717-1719. https://doi.org/10.47392/IRJAEH.2025.0246

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