Quick Summary: When we don't have enough training samples to cover diverse cases in image classification, often CNN might overfit. Undergraduate, Computer Science and Engineering, 8th Semester Course "Neural Network and Deep Learning".

Lec 13 Regularization Part 2 Data Augmentation -

When we don't have enough training samples to cover diverse cases in image classification, often CNN might overfit. Undergraduate, Computer Science and Engineering, 8th Semester Course "Neural Network and Deep Learning".

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  • When we don't have enough training samples to cover diverse cases in image classification, often CNN might overfit.
  • Undergraduate, Computer Science and Engineering, 8th Semester Course "Neural Network and Deep Learning".

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Lec 13 Regularization Part 2 (Data Augmentation)

Lec 13 Regularization Part 2 (Data Augmentation)

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