EAI Endorsed Transactions on Smart Cities (Oct 2021)

IOT Enabled Weedicide Control Using Image Processing at Agriculture Field

  • G. Manjula,
  • P. Visu,
  • S. Chakaravarthi

DOI
https://doi.org/10.4108/eai.30-6-2021.170252
Journal volume & issue
Vol. 5, no. 16

Abstract

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The Aim of this project is to automate plant monitoring and smart gardening using IOT in the Arduino Mega Platform. Identifying diseases in plants leave is a challenging task for farmers and also for researchers. The key highlight of the project is able to detect the type of disease by use of image processing. Image Processing steps are pre-processing, spot segmentation and features extraction, and classification. The extracted features are optimized by genetic algorithm and classified by KNN Classifier. We proposed a methodology that is tested for four types of apple plant disease including healthy leaves, Black Rot, Rust, and Scab. When the disease is identified we provided a pesticide solution displayed in the LCD Display and the same is sent to the farmer mobile with the help of GSM. All the Stages are monitored in an IOT Webpage.

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