335 lines
10 KiB
Lua
335 lines
10 KiB
Lua
require 'image'
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local gm = require 'graphicsmagick'
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local iproc = require 'iproc'
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local reconstruct = require 'reconstruct'
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local pairwise_transform = {}
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local function random_half(src, p)
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p = p or 0.25
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--local filter = ({"Box","Blackman", "SincFast", "Jinc"})[torch.random(1, 4)]
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local filter = "Box"
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if p < torch.uniform() and (src:size(2) > 768 and src:size(3) > 1024) then
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return iproc.scale(src, src:size(3) * 0.5, src:size(2) * 0.5, filter)
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else
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return src
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end
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end
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local function pcacov(x)
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local mean = torch.mean(x, 1)
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local xm = x - torch.ger(torch.ones(x:size(1)), mean:squeeze())
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local c = torch.mm(xm:t(), xm)
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c:div(x:size(1) - 1)
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local ce, cv = torch.symeig(c, 'V')
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return ce, cv
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end
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local function crop_if_large(src, max_size)
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if src:size(2) > max_size and src:size(3) > max_size then
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local yi = torch.random(0, src:size(2) - max_size)
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local xi = torch.random(0, src:size(3) - max_size)
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return image.crop(src, xi, yi, xi + max_size, yi + max_size)
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else
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return src
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end
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end
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local function active_cropping(x, y, size, offset, p, tries)
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assert("x:size == y:size", x:size(2) == y:size(2) and x:size(3) == y:size(3))
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local r = torch.uniform()
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if p < r then
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local xi = torch.random(offset, y:size(3) - (size + offset + 1))
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local yi = torch.random(offset, y:size(2) - (size + offset + 1))
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local xc = image.crop(x, xi, yi, xi + size, yi + size)
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local yc = image.crop(y, xi, yi, xi + size, yi + size)
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yc = yc:float():div(255)
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xc = xc:float():div(255)
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return xc, yc
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else
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local samples = {}
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local sum_mse = 0
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for i = 1, tries do
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local xi = torch.random(offset, y:size(3) - (size + offset + 1))
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local yi = torch.random(offset, y:size(2) - (size + offset + 1))
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local xc = image.crop(x, xi, yi, xi + size, yi + size):float():div(255)
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local yc = image.crop(y, xi, yi, xi + size, yi + size):float():div(255)
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local mse = (xc - yc):pow(2):mean()
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sum_mse = sum_mse + mse
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table.insert(samples, {xc = xc, yc = yc, mse = mse})
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end
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if sum_mse > 0 then
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table.sort(samples,
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function (a, b)
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return a.mse > b.mse
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end)
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end
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return samples[1].xc, samples[1].yc
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end
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end
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local function color_noise(src)
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local p = 0.1
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src = src:float():div(255)
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local src_t = src:reshape(src:size(1), src:nElement() / src:size(1)):t():contiguous()
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local ce, cv = pcacov(src_t)
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local color_scale = torch.Tensor(3):uniform(1 / (1 + p), 1 + p)
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pca_space = torch.mm(src_t, cv):t():contiguous()
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for i = 1, 3 do
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pca_space[i]:mul(color_scale[i])
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end
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x = torch.mm(pca_space:t(), cv:t()):t():contiguous():resizeAs(src)
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x[torch.lt(x, 0.0)] = 0.0
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x[torch.gt(x, 1.0)] = 1.0
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return x:mul(255):byte()
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end
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local function shift_1px(src)
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-- reducing the even/odd issue in nearest neighbor.
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local r = torch.random(1, 4)
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end
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local function flip_augment(x, y)
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local flip = torch.random(1, 4)
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if y then
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if flip == 1 then
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x = image.hflip(x)
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y = image.hflip(y)
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elseif flip == 2 then
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x = image.vflip(x)
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y = image.vflip(y)
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elseif flip == 3 then
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x = image.hflip(image.vflip(x))
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y = image.hflip(image.vflip(y))
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elseif flip == 4 then
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end
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return x, y
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else
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if flip == 1 then
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x = image.hflip(x)
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elseif flip == 2 then
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x = image.vflip(x)
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elseif flip == 3 then
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x = image.hflip(image.vflip(x))
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elseif flip == 4 then
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end
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return x
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end
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end
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local function overlay_augment(src, p)
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p = p or 0.25
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if torch.uniform() > (1.0 - p) then
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local r = torch.uniform(0.2, 0.8)
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local t = "float"
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if src:type() == "torch.ByteTensor" then
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src = src:float():div(255)
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t = "byte"
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end
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local flip = flip_augment(src)
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flip:mul(r):add(src * (1.0 - r))
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if t == "byte" then
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flip = flip:mul(255):byte()
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end
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return flip
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else
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return src
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end
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end
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local function data_augment(y, options)
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y = flip_augment(y)
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if options.color_noise then
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y = color_noise(y)
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end
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if options.overlay then
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y = overlay_augment(y)
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end
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return y
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end
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local INTERPOLATION_PADDING = 16
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function pairwise_transform.scale(src, scale, size, offset, n, options)
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local filters = {
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"Box","Box", -- 0.012756949974688
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"Blackman", -- 0.013191924552285
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--"Cartom", -- 0.013753536746706
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--"Hanning", -- 0.013761314529647
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--"Hermite", -- 0.013850225205266
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"SincFast", -- 0.014095824314306
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--"Jinc", -- 0.014244299255442
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}
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if options.random_half then
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src = random_half(src)
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end
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local downscale_filter = filters[torch.random(1, #filters)]
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local y = data_augment(crop_if_large(src, math.max(size * 4, 512)), options)
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local down_scale = 1.0 / scale
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local x = iproc.scale(iproc.scale(y, y:size(3) * down_scale,
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y:size(2) * down_scale, downscale_filter),
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y:size(3), y:size(2))
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local batch = {}
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for i = 1, n do
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local xc, yc = active_cropping(x, y,
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size,
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INTERPOLATION_PADDING,
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options.active_cropping_rate,
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options.active_cropping_tries)
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if options.rgb then
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else
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yc = image.rgb2yuv(yc)[1]:reshape(1, yc:size(2), yc:size(3))
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xc = image.rgb2yuv(xc)[1]:reshape(1, xc:size(2), xc:size(3))
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end
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table.insert(batch, {xc, image.crop(yc, offset, offset, size - offset, size - offset)})
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end
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return batch
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end
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function pairwise_transform.jpeg_(src, quality, size, offset, n, options)
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local y = data_augment(crop_if_large(src, math.max(size * 4, 512)), options)
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local x = y
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for i = 1, #quality do
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x = gm.Image(x, "RGB", "DHW")
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x:format("jpeg")
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if options.jpeg_sampling_factors == 444 then
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x:samplingFactors({1.0, 1.0, 1.0})
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else -- 420
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x:samplingFactors({2.0, 1.0, 1.0})
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end
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local blob, len = x:toBlob(quality[i])
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x:fromBlob(blob, len)
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x = x:toTensor("byte", "RGB", "DHW")
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end
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local batch = {}
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for i = 1, n do
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local xc, yc = active_cropping(x, y, size, 0,
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options.active_cropping_rate,
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options.active_cropping_tries)
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xc, yc = flip_augment(xc, yc)
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if options.rgb then
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else
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yc = image.rgb2yuv(yc)[1]:reshape(1, yc:size(2), yc:size(3))
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xc = image.rgb2yuv(xc)[1]:reshape(1, xc:size(2), xc:size(3))
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end
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table.insert(batch, {xc, image.crop(yc, offset, offset, size - offset, size - offset)})
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end
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return batch
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end
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function pairwise_transform.jpeg(src, category, level, size, offset, n, options)
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if category == "anime_style_art" then
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if level == 1 then
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if torch.uniform() > 0.8 then
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return pairwise_transform.jpeg_(src, {},
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size, offset, n, options)
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else
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return pairwise_transform.jpeg_(src, {torch.random(65, 85)},
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size, offset, n, options)
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end
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elseif level == 2 then
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local r = torch.uniform()
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if torch.uniform() > 0.8 then
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return pairwise_transform.jpeg_(src, {},
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size, offset, n, options)
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else
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if r > 0.6 then
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return pairwise_transform.jpeg_(src, {torch.random(27, 70)},
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size, offset, n, options)
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elseif r > 0.3 then
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local quality1 = torch.random(37, 70)
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local quality2 = quality1 - torch.random(5, 10)
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return pairwise_transform.jpeg_(src, {quality1, quality2},
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size, offset, n, options)
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else
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local quality1 = torch.random(52, 70)
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local quality2 = quality1 - torch.random(5, 15)
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local quality3 = quality1 - torch.random(15, 25)
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return pairwise_transform.jpeg_(src,
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{quality1, quality2, quality3},
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size, offset, n, options)
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end
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end
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else
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error("unknown noise level: " .. level)
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end
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elseif category == "photo" then
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if level == 1 then
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if torch.uniform() > 0.7 then
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return pairwise_transform.jpeg_(src, {},
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size, offset, n,
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options)
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else
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return pairwise_transform.jpeg_(src, {torch.random(80, 95)},
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size, offset, n,
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options)
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end
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elseif level == 2 then
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if torch.uniform() > 0.7 then
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return pairwise_transform.jpeg_(src, {},
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size, offset, n,
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options)
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else
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return pairwise_transform.jpeg_(src, {torch.random(65, 85)},
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size, offset, n,
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options)
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end
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else
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error("unknown noise level: " .. level)
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end
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else
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error("unknown category: " .. category)
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end
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end
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local function test_jpeg()
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local loader = require './image_loader'
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local src = loader.load_byte("../images/miku_CC_BY-NC.jpg")
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for i = 2, 9 do
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local xy = pairwise_transform.jpeg_(random_half(src),
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{i * 10}, 128, 0, 2, {color_noise = false, random_half = true, overlay = true, rgb = true})
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for i = 1, #xy do
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image.display({image = xy[i][1], legend = "y:" .. (i * 10), max=1,min=0})
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image.display({image = xy[i][2], legend = "x:" .. (i * 10),max=1,min=0})
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end
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--print(x:mean(), y:mean())
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end
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end
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local function test_scale()
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torch.setdefaulttensortype('torch.FloatTensor')
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local loader = require './image_loader'
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local src = loader.load_byte("../images/miku_CC_BY-NC.jpg")
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local options = {color_noise = true,
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random_half = true,
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overlay = false,
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active_cropping_rate = 1.5,
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active_cropping_tries = 10,
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rgb = true
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}
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for i = 1, 9 do
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local xy = pairwise_transform.scale(src, 2.0, 128, 7, 1, options)
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image.display({image = xy[1][1], legend = "y:" .. (i * 10), min = 0, max = 1})
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image.display({image = xy[1][2], legend = "x:" .. (i * 10), min = 0, max = 1})
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print(xy[1][1]:size(), xy[1][2]:size())
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--print(x:mean(), y:mean())
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end
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end
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local function test_color_noise()
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torch.setdefaulttensortype('torch.FloatTensor')
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local loader = require './image_loader'
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local src = loader.load_byte("../images/miku_CC_BY-NC.jpg")
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for i = 1, 10 do
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image.display(color_noise(src))
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end
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end
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local function test_overlay()
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torch.setdefaulttensortype('torch.FloatTensor')
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local loader = require './image_loader'
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local src = loader.load_byte("../images/miku_CC_BY-NC.jpg")
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for i = 1, 10 do
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image.display(overlay_augment(src, 1.0))
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end
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end
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--test_scale()
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--test_jpeg()
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--test_jpeg_scale()
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--test_color_noise()
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--test_overlay()
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return pairwise_transform
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