Plant Leaf Disease detection using CNN Detailed Explaination-1 | Python | Image Processing

Plant Disease Detection using Machine Learning with Source Code

Plant Leaf Disease Detection using Image Processing, In this video will detect the disease from plant leaf, user have to first create the account and login with same credential, if the password is incorrect then it will gave warning or else dashboard will open. Graphical User Interface designed using Flask and Machine Learning Model is trained on large dataset of different fruits with their diseases and also provide supplements details. For leaf disease detection, user have to select the input image of leaf and it will detect the disease in plant leaf and simultaneously it will show probability in percentage and provide the brief description of disease and also suggest the supplements for that particular plant leaf. It will suggest for prevent this plant disease and method to control the disease.

Plant Leaf Disease Detection using CNN Python

Software Requirements :-

  • Coding Language : Python
  • Implementation: Software Framework.
  • Operating system : Windows 10 / 11.
  • Graphical User Interface : Tkinter

Hardware Requirement:-

  • Input Devices : Keyboard, Mouse.
  • System : Pentium i3 Processor.
  • Hard Disk : 500 GB.
  • RAM : 4 GB.

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