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evaluation_inpaint.lua
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evaluation_inpaint.lua
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require 'torch'
require 'image'
require 'sys'
require 'cunn'
require 'cutorch'
require 'cudnn'
imgPath = 'testdata_inpaint_BSDS500'
savePath = 'result_inpaint'
model = torch.load('CEILNet_inpaint.net')
model = model:cuda()
model:training()
model_edge = nn.computeEdge(100)
files = {}
for file in paths.files(imgPath) do
if string.find(file,'-input.png') then
table.insert(files, paths.concat(imgPath,file))
end
end
for _,inputFile in ipairs(files) do
local inputImg = image.load(inputFile)
local height = inputImg:size(2)
local width = inputImg:size(3)
local input = torch.CudaTensor(1, 3, height, width)
input[1] = inputImg:cuda()
input = input * 255
local inputs = torch.CudaTensor(1, 4, height, width)
inputs[{{},{1,3},{},{}}] = input
inputs[{{},{4},{},{}}] = model_edge:forward(input)
inputs = inputs - 115
local inputs = {inputs,input}
local inputC = input:clone()
local predictions = model:forward(inputs)
local pred_b = predictions[2]
for m = 1,3 do
local numerator = torch.dot(pred_b[1][m], inputC[1][m])
local denominator = torch.dot(pred_b[1][m], pred_b[1][m])
local alpha = numerator/denominator
pred_b[1][m] = pred_b[1][m] * alpha
end
local savColor = string.gsub(inputFile,imgPath,savePath)
pred_b = pred_b/255
local sav = string.gsub(savColor,'input.png','predict.png')
image.save(sav,pred_b[1])
::done::
end