dsanno / chainer-neural-style

implementation of neural style using Chainer

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Chainer implementation of style transfer using neural network

Implementation of

Requirements

Usage

Download VGG 16 layers caffe model

Convert caffemodel to chainer model

$ python src/create_chainer_model.py

Transfer image style using "A Neural Algorithm of Artistic Style"

$ python src/run.py -c content_image.png -s style_image.png -o out_dir -g 0

Options:

  • -c (--content) <file path>: required
    Content image file path
  • -s (--style) <file path>: required
    Style image file path
  • -o (--out_dir) <directory path>: optional
    Output directory path (default: output)
  • -g (--gpu) <GPU device index>: optional
    GPU device index. Negative value indecates CPU (default: -1)
  • --w (--width) <integer>: optional
    Image width (default: 256)
  • --iter <integer>: optional
    Number of iteration for each iteration (default: 2000)
  • --initial_image <string|: optional Initial image of optimization: "random" or "content" (default: random)
  • --keep_color: optional Keep color phase if specified
  • --match_color_histogram: optional
    Use "Color histogram matching" algorithm in "Preserving Color in Neural Artistic Style Transfer"
  • --luminance_only: optional
    Use "Luminance-only" algorithm in "Preserving Color in Neural Artistic Style Transfer"
  • --resolution_num <int>: optional
    Number of resolutions (default: 1)
  • --save_iter <integer>: optional
    Number of iteration for saving images (default: 100)
  • --lr <float>: optional
    Learning rate: "alpha" value of ADAM (default: 10)
  • --content_weight <float>: optional
    Weight of content loss (default: 0.005)
  • --style_weight <float>: optional
    Weight of style loss (default: 1)
  • --tv_weight <float>: optional
    Weight of total variation loss (default: 1e-5)

Transfer image style using Markov Random Fields algorithm

$ python src/run_mrf.py -c content_image.png -s style_image.png -o out_dir -g 0

Options:

  • -c (--content) <file path>: required
    Content image file path
  • -s (--style) <file path>: required
    Style image file path
  • -o (--out_dir) <directory path>: optional
    Output directory path (default: output)
  • -g (--gpu) <GPU device index>: optional
    GPU device index. Negative value indecates CPU (default: -1)
  • --w (--width) <integer>: optional
    Image width (default: 256)
  • --iter <integer>: optional
    Number of iteration for each resolution (default: 100)
  • --initial_image <string|: optional Initial image of optimization: "random" or "content" (default: content)
  • --keep_color: optional Keep color phase if specified
  • --match_color_histogram: optional
    Use "Color histogram matching" algorithm in "Preserving Color in Neural Artistic Style Transfer"
  • --luminance_only: optional
    Use "Luminance-only" algorithm in "Preserving Color in Neural Artistic Style Transfer"
  • --resolution_num <int>: optional
    Number of resolutions (default: 3)
  • --save_iter <integer>: optional
    Number of iteration for saving images (default: 10)
  • --lr <float>: optional
    Learning rate: "alpha" value of ADAM (default: 2.0)
  • --content_weight <float>: optional
    Weight of content loss (default: 0.2)
  • --style_weight <float>: optional
    Weight of style loss (default: 1)
  • --tv_weight <float>: optional
    Weight of total variation loss (default: 1e-5)

License

MIT License

About

implementation of neural style using Chainer

License:Other


Languages

Language:Python 100.0%