Corpus ID: 37819922

Derivation of Backpropagation in Convolutional Neural Network ( CNN )

@inproceedings{Qi2016DerivationOB,
  title={Derivation of Backpropagation in Convolutional Neural Network ( CNN )},
  author={H. Qi},
  year={2016}
}
Derivation of backpropagation in convolutional neural network (CNN) is conducted based on an example with two convolutional layers. The step-by-step derivation is helpful for beginners. First, the feedforward procedure is claimed, and then the backpropagation is derived based on the example. 1 Feedforward 
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