What are some common pitfalls and best practices for data augmentation in CNN image classification?

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Data augmentation is a technique to increase the diversity and size of your training data by applying random transformations, such as cropping, flipping, rotating, or changing the brightness and contrast. Data augmentation can help improve the performance and generalization of your convolutional neural networks (CNNs) for image classification tasks. However, data augmentation also has some potential pitfalls and challenges that you should be aware of and avoid. In this tutorial, you will learn some common pitfalls and best practices for data augmentation in CNN image classification.

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