Questions
- Why was the prediction on the translated image in the first section of the chapter low when using traditional neural networks?
- How is convolution done?
- How are optimal weight values in a filter identified?
- How does the combination of convolution and pooling help in addressing the issue of image translation?
- What do the convolution filters in layers closer to the input layer learn?
- What functionality does pooling have that helps in building a model?
- Why can’t we take an input image, flatten it just like we did on the Fashion-MNIST dataset, and train a model for real-world images?
- How does data augmentation help in improving image translation?
- In what scenario do we leverage
collate_fn
for dataloaders? - What impact does varying the number of training data points have on the classification accuracy of the validation dataset?
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