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Perceptual Losses for Neural Networks: Caffe implementation of loss layers based on perceptual image quality metrics.

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Perceptual Losses for Neural Networks (PL4NN)

A Caffe implementation of the perceptual loss functions described in the paper: "Loss Functions for Neural Networks for Image Processing", Hang Zhao, Orazio Gallo, Iuri Frosio, and Jan Kautz, IEEE Transactions on Computational Imaging, 2017.

Assuming that CAFFE_ROOT is Caffe's installation folder:

  1. Copy loss.py to $CAFFE_ROOT/python
  2. Add $CAFFE_ROOT/python to your Python path
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