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fast_neural_style.lua
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fast_neural_style.lua
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require 'torch'
require 'nn'
require 'image'
require 'fast_neural_style.ShaveImage'
require 'fast_neural_style.TotalVariation'
require 'fast_neural_style.InstanceNormalization'
local utils = require 'fast_neural_style.utils'
local preprocess = require 'fast_neural_style.preprocess'
--[[
Use a trained feedforward model to stylize either a single image or an entire
directory of images.
--]]
local cmd = torch.CmdLine()
-- Model options
cmd:option('-model', 'models/instance_norm/candy.t7')
cmd:option('-image_size', 768)
cmd:option('-median_filter', 3)
cmd:option('-timing', 0)
-- Input / output options
cmd:option('-input_image', 'images/content/chicago.jpg')
cmd:option('-output_image', 'out.png')
cmd:option('-input_dir', '')
cmd:option('-output_dir', '')
-- GPU options
cmd:option('-gpu', -1)
cmd:option('-backend', 'cuda')
cmd:option('-use_cudnn', 1)
cmd:option('-cudnn_benchmark', 0)
local function main()
local opt = cmd:parse(arg)
if (opt.input_image == '') and (opt.input_dir == '') then
error('Must give exactly one of -input_image or -input_dir')
end
local dtype, use_cudnn = utils.setup_gpu(opt.gpu, opt.backend, opt.use_cudnn == 1)
local ok, checkpoint = pcall(function() return torch.load(opt.model) end)
if not ok then
print('ERROR: Could not load model from ' .. opt.model)
print('You may need to download the pretrained models by running')
print('bash models/download_style_transfer_models.sh')
return
end
local model = checkpoint.model
model:evaluate()
model:type(dtype)
if use_cudnn then
cudnn.convert(model, cudnn)
if opt.cudnn_benchmark == 0 then
cudnn.benchmark = false
cudnn.fastest = true
end
end
local preprocess_method = checkpoint.opt.preprocessing or 'vgg'
local preprocess = preprocess[preprocess_method]
local function run_image(in_path, out_path)
local img = image.load(in_path, 3)
if opt.image_size > 0 then
img = image.scale(img, opt.image_size)
end
local H, W = img:size(2), img:size(3)
local img_pre = preprocess.preprocess(img:view(1, 3, H, W)):type(dtype)
local timer = nil
if opt.timing == 1 then
-- Do an extra forward pass to warm up memory and cuDNN
model:forward(img_pre)
timer = torch.Timer()
if cutorch then cutorch.synchronize() end
end
local img_out = model:forward(img_pre)
if opt.timing == 1 then
if cutorch then cutorch.synchronize() end
local time = timer:time().real
print(string.format('Image %s (%d x %d) took %f',
in_path, H, W, time))
end
local img_out = preprocess.deprocess(img_out)[1]
if opt.median_filter > 0 then
img_out = utils.median_filter(img_out, opt.median_filter)
end
print('Writing output image to ' .. out_path)
local out_dir = paths.dirname(out_path)
if not path.isdir(out_dir) then
paths.mkdir(out_dir)
end
image.save(out_path, img_out)
end
if opt.input_dir ~= '' then
if opt.output_dir == '' then
error('Must give -output_dir with -input_dir')
end
for fn in paths.files(opt.input_dir) do
if utils.is_image_file(fn) then
local in_path = paths.concat(opt.input_dir, fn)
local out_path = paths.concat(opt.output_dir, fn)
run_image(in_path, out_path)
end
end
elseif opt.input_image ~= '' then
if opt.output_image == '' then
error('Must give -output_image with -input_image')
end
run_image(opt.input_image, opt.output_image)
end
end
main()