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Classification of Sugarcane Leaf Disease

Model Description

The model is based on EfficientNet architecture and has been fine-tuned on a balanced dataset containing six classes:

  • Bacterial Blight Disease
  • Healthy Leaves
  • Mosaic Disease
  • Red Rot Disease
  • Rust Disease
  • Yellow Disease

The model accepts RGB images of sugarcane leaves and outputs the predicted disease class.

Dataset

The dataset used for training consists of 19926 images of sugarcane leaves, evenly distributed across the six disease classes. Each image has been pre-processed and augmented to improve model performance.

Data Augmentation Techniques Used:

  • Random rotation
  • Flipping
  • Zooming
  • Resizing
  • Cropping

Model Evaluation

Epoch [10/10], Loss: 0.2903, Accuracy: 90.28% Validation Loss: 0.3633, Accuracy: 86.32%

Accuracy_test: 0.8683

Acknowledgements

The dataset used for training can be found : https://www.kaggle.com/datasets/akilesh253/sugarcane-plant-diseases-dataset

License : CDLA-Sharing-1.0

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