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dataaugmentation

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Classifying Images of 10 categories of animals taken from Kaggle Database using VGG16, ResNet-50 and imagenet. Learning Rates for respective models is Estimated from Epoch Vs Learning Rate graph obtained using Learning rate finder function

  • Updated Jul 25, 2020
  • Jupyter Notebook

Data augmentation is a technique used to create more examples, artificially, from an existing dataset. This is useful if the dataset is small and we want to increase the number of examples. Data augmentation can often solve over-fitting so that our model generalizes well after training. For images, a variety of augmentation can be applied to incr…

  • Updated Oct 6, 2020
  • Jupyter Notebook

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