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Image-Based-Plant-Disease-Classification

Inception V3 Based Plant Disease Classification Model

Course Project for EE468 Spring 2023

Hakan Taştan, Eray Kuru, Yaseming Köse

Model:

  • 39 Classes
  • input_shape = (256, 256, 3)
  • Total params: 47,520,711
  • Trainable params: 38,545,447
  • Non-trainable params: 8,975,264
  • loss = 'categorical_crossentropy'
  • Adam Optimizer
  • Learning rate = 0.0001 for first 81 epochs
  • Learning rate = 0.00001 after epoch 81
  • batch_size = 32
  • Trained for 111 epochs
  • Data is randomly splitted into train/validation/test
  • train/validation/test => 60/20/20
  • train: 31231 images belonging to 39 classes.
  • validation: 10407 images belonging to 39 classes.
  • test: 10444 images belonging to 39 classes.
  • Train Set -> 99.16% accuracy
  • Validation Set -> 98.32% accuracy
  • Test Set -> 98.15% accuracy
  • Seperate Test for evaluation 97.82% accuracy on 3352 images

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