AI Driven Crop Disease Prediction and Management System

Authors

  • R. Karthikeyan Assistant Professor, J.N.N Institute of Engineering, Kannigaipair, Tamil Nadu, India Author
  • Bainaboina Nandhini Department of Computer Science and Engineering, J.N.N Institute of Engineering (Autonomous), Kannigaipair, Tiruvallur, Tamil Nadu, India Author
  • Avula Mounika Department of Computer Science and Engineering, J.N.N Institute of Engineering (Autonomous), Kannigaipair, Tiruvallur, Tamil Nadu, India Author
  • Siddhavatam Venkatesh Department of Computer Science and Engineering, J.N.N Institute of Engineering (Autonomous), Kannigaipair, Tiruvallur, Tamil Nadu, India Author
  • Mopuri Sandeep Department of Artificial Intelligence and Data Science, J.N.N Institute of Engineering (Autonomous), Kannigaipair, Tiruvallur, Tamil Nadu, India Author

DOI:

https://doi.org/10.32628/CSEIT25112817

Keywords:

Agriculture Technology, Convolutional Neural Networks (CNNs), Crop Disease Detection, Early Disease Prediction

Abstract

Agriculture is extremely important to human civilization, providing food and contributing to the economy. Plants are often susceptible to diseases and insects that have considerable challenges during production. Early detection of harvest diseases is important to minimize damage and reduce costs. While traditional methods do not provide real-time identification, foldable neuronal networks (CNNs) provide a solution by allowing for accurate detection and classification of leaf disease. This study focuses on identifying diseases in plants such as apples, grapes, corn, potatoes and tomatoes. The proposed deep CNN model is compared to a transfer learning approach, such as VGG16. AI-based systems analyze plant images to recognize diseases at the early stages and recommend management strategies, loss of harvests and improved yields. Such systems have applications in agriculture and biological research.

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References

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Published

08-04-2025

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Research Articles