VGGWildFireModel for Wildfire Classification

Model Details

  • Model Architecture: VGG-16 (Modified)
  • Framework: PyTorch
  • Input Shape: 3-channel RGB images
  • Number of Parameters: ~ (Based on VGG-16)
  • Output: Binary classification (wildfire presence)

Model Description

This model is a fine-tuned VGG-16 for wildfire classification. The pretrained VGG-16 backbone is used with its feature extractor frozen, while only the final classification layer is trained. The last fully connected layer has been replaced with a single output neuron for binary classification.

Training Details

Losses Per Epoch

Epoch Training Loss Validation Loss
1 0.2571 0.3858
2 0.0846 0.1935
3 0.0165 0.1573
4 0.0013 0.1204
5 0.0001 0.1243
6 0.0000 0.1247
7 0.0000 0.1244
8 0.0000 0.1242
9 0.0000 0.1240
10 0.0000 0.1236

License

This model is released under the MIT License.


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