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Predicting the disease of tomato plants by processing its leaf image.

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🍀 PlantVillage Dataset 🍀


This dataset is taken from Kaggle and below the link is given.

https://www.kaggle.com/emmarex/plantdisease


🍅 Tomato Disease Prediction 🍅


🍂 Early Blight 🍂

  • Early blight is one of the most common tomato diseases, occurring nearly every season wherever tomatoes are grown.
  • It affects leaves, fruits and stems and can be severely yield limiting when susceptible cultivars are used and weather is favorable.
  • Severe defoliation can occur and result in sunscald on the fruit.
  • Early blight is common in both field and high tunnel tomato production in Minnesota.

(Source credit : NC State Extension Publications - NC State University)


🍂 Late Blight 🍂

  • Late blight is a potentially devastating disease of tomato and potato, infecting leaves, stems, tomato fruit, and potato tubers.
  • The disease spreads quickly in fields and can result in total crop failure if untreated.
  • Late blight does not occur every year in Minnesota.
  • Late blight of potato was responsible for the Irish potato famine of the late 1840s.

(Source credit : Open Access Goverment and Paplauski Vital)


🌐 Objective 🌐


  • Developing deep learning model to predict image of tomato leaves which will be having a disease.
  • Creating User Interface using Gradio Library

💻 Prerequisites 💻


  • Python = 3.7.12
  • Tensorflow (with Keras) = 2.5.0
  • Seaborn = 0.11.2
  • Jupyter=1.0.0
  • Gradio=2.6.3

👨‍💻 Instructions 👨‍💻


  • Create an anaconda environment "myenv" with mentioned Python version. "conda create -n myenv python=3.7.12".

  • Run command "pip install -r requirements.txt" on your prompt.

  • Run "Tomato_Disease_Prediction.ipynb" this file at the end "h5.file" will generate which will be later used by another file "User_Interface.ipynb"

  • Now, Run "User_Interface.ipynb", at the end you will see public url, click on it check the model prediction!


🖼️ Interference Sample 🖼️


image


image


image


📸 Images Credits 📸

  • NC State Extension Publications - NC State University
  • Open Access Goverment and Paplauski Vital

✍️ Acknowledgements ✍️

  • This dataset was gotten from spMohanty's GitHub Repo

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Predicting the disease of tomato plants by processing its leaf image.

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