| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290 | require 'pl'local __FILE__ = (function() return string.gsub(debug.getinfo(2, 'S').source, "^@", "") end)()package.path = path.join(path.dirname(__FILE__), "..", "lib", "?.lua;") .. package.pathrequire 'xlua'require 'w2nn'local iproc = require 'iproc'local reconstruct = require 'reconstruct'local image_loader = require 'image_loader'local gm = require 'graphicsmagick'local cjson = require 'cjson'local cmd = torch.CmdLine()cmd:text()cmd:text("waifu2x-benchmark")cmd:text("Options:")cmd:option("-dir", "./data/test", 'test image directory')cmd:option("-model1_dir", "./models/anime_style_art_rgb", 'model1 directory')cmd:option("-model2_dir", "", 'model2 directory (optional)')cmd:option("-method", "scale", '(scale|noise)')cmd:option("-filter", "Catrom", "downscaling filter (Box|Lanczos|Catrom(Bicubic))")cmd:option("-color", "y", '(rgb|y)')cmd:option("-noise_level", 1, 'model noise level')cmd:option("-jpeg_quality", 75, 'jpeg quality')cmd:option("-jpeg_times", 1, 'jpeg compression times')cmd:option("-jpeg_quality_down", 5, 'value of jpeg quality to decrease each times')cmd:option("-range_bug", 0, 'Reproducing the dynamic range bug that is caused by MATLAB\'s rgb2ycbcr(1|0)')cmd:option("-gamma_correction", 0, 'Resizing with colorspace correction(sRGB:gamma 2.2) (0|1)')cmd:option("-save_image", 0, 'save converted images')cmd:option("-save_baseline_image", 0, 'save baseline images')cmd:option("-output_dir", "./", 'output directroy')cmd:option("-show_progress", 1, 'show progressbar')cmd:option("-baseline_filter", "Catrom", 'baseline interpolation (Box|Lanczos|Catrom(Bicubic))')cmd:option("-save_info", 0, 'save score and parameters to benchmark.txt')cmd:option("-save_all", 0, 'group -save_info, -save_image and -save_baseline_image option')local function to_bool(settings, name)   if settings[name] == 1 then      settings[name] = true   else      settings[name] = false   endendlocal opt = cmd:parse(arg)torch.setdefaulttensortype('torch.FloatTensor')if cudnn then   cudnn.fastest = true   cudnn.benchmark = falseendto_bool(opt, "gamma_correction")to_bool(opt, "save_all")if opt.save_all then   opt.save_image = true   opt.save_info = true   opt.save_baseline_image = trueelse   to_bool(opt, "save_image")   to_bool(opt, "save_info")   to_bool(opt, "save_baseline_image")endto_bool(opt, "show_progress")local function rgb2y_matlab(x)   local y = torch.Tensor(1, x:size(2), x:size(3)):zero()   x = iproc.byte2float(x)   y:add(x[1] * 65.481)   y:add(x[2] * 128.553)   y:add(x[3] * 24.966)   y:add(16.0)   return y:byte():float()endlocal function RGBMSE(x1, x2)   x1 = iproc.float2byte(x1):float()   x2 = iproc.float2byte(x2):float()   return (x1 - x2):pow(2):mean()endlocal function YMSE(x1, x2)   if opt.range_bug == 1 then      local x1_2 = rgb2y_matlab(x1)      local x2_2 = rgb2y_matlab(x2)      return (x1_2 - x2_2):pow(2):mean()   else      local x1_2 = image.rgb2y(x1):mul(255.0)      local x2_2 = image.rgb2y(x2):mul(255.0)      return (x1_2 - x2_2):pow(2):mean()   endendlocal function MSE(x1, x2, color)   if color == "y" then      return YMSE(x1, x2)   else      return RGBMSE(x1, x2)   endendlocal function PSNR(x1, x2, color)   local mse = math.max(MSE(x1, x2, color), 1)   return 10 * math.log10((255.0 * 255.0) / mse)endlocal function transform_jpeg(x, opt)   for i = 1, opt.jpeg_times do      jpeg = gm.Image(x, "RGB", "DHW")      jpeg:format("jpeg")      jpeg:samplingFactors({1.0, 1.0, 1.0})      blob, len = jpeg:toBlob(opt.jpeg_quality - (i - 1) * opt.jpeg_quality_down)      jpeg:fromBlob(blob, len)      x = jpeg:toTensor("byte", "RGB", "DHW")   end   return iproc.byte2float(x)endlocal function baseline_scale(x, filter)   return iproc.scale(x,		      x:size(3) * 2.0,		      x:size(2) * 2.0,		      filter)endlocal function transform_scale(x, opt)   if opt.gamma_correction then      return iproc.scale_with_gamma22(x,			 x:size(3) * 0.5,			 x:size(2) * 0.5,			 opt.filter)   else      return iproc.scale(x,			 x:size(3) * 0.5,			 x:size(2) * 0.5,			 opt.filter)   endendlocal function benchmark(opt, x, input_func, model1, model2)   local model1_mse = 0   local model2_mse = 0   local baseline_mse = 0   local model1_psnr = 0   local model2_psnr = 0   local baseline_psnr = 0      for i = 1, #x do      local ground_truth = x[i].image      local basename = x[i].basename            local input, model1_output, model2_output, baseline_output      input = input_func(ground_truth, opt)      t = sys.clock()      if input:size(3) == ground_truth:size(3) then	 model1_output = reconstruct.image(model1, input)	 if model2 then	    model2_output = reconstruct.image(model2, input)	 end      else	 model1_output = reconstruct.scale(model1, 2.0, input)	 if model2 then	    model2_output = reconstruct.scale(model2, 2.0, input)	 end	 baseline_output = baseline_scale(input, opt.baseline_filter)      end      model1_mse = model1_mse + MSE(ground_truth, model1_output, opt.color)      model1_psnr = model1_psnr + PSNR(ground_truth, model1_output, opt.color)      if model2 then	 model2_mse = model2_mse + MSE(ground_truth, model2_output, opt.color)	 model2_psnr = model2_psnr + PSNR(ground_truth, model2_output, opt.color)      end      if baseline_output then	 baseline_mse = baseline_mse + MSE(ground_truth, baseline_output, opt.color)	 baseline_psnr = baseline_psnr + PSNR(ground_truth, baseline_output, opt.color)      end      if opt.save_image then	 if opt.save_baseline_image and baseline_output then	    image.save(path.join(opt.output_dir, string.format("%s_baseline.png", basename)),		       baseline_output)	 end	 if model1_output then	    image.save(path.join(opt.output_dir, string.format("%s_model1.png", basename)),		       model1_output)	 end	 if model2_output then	    image.save(path.join(opt.output_dir, string.format("%s_model2.png", basename)),		       model2_output)	 end      end      if opt.show_progress or i == #x then	 if model2 then	    if baseline_output then	       io.stdout:write(		  string.format("%d/%d; baseline_rmse=%f, model1_rmse=%f, model2_rmse=%f, baseline_psnr=%f, model1_psnr=%f, model2_psnr=%f \r",				i, #x,				math.sqrt(baseline_mse / i),				math.sqrt(model1_mse / i), math.sqrt(model2_mse / i),				baseline_psnr / i,				model1_psnr / i, model2_psnr / i		  ))	    else	       io.stdout:write(		  string.format("%d/%d; model1_rmse=%f, model2_rmse=%f, model1_psnr=%f, model2_psnr=%f \r",				i, #x,				math.sqrt(model1_mse / i), math.sqrt(model2_mse / i),				model1_psnr / i, model2_psnr / i		  ))	    end	 else	    if baseline_output then	       io.stdout:write(		  string.format("%d/%d; baseline_rmse=%f, model1_rmse=%f, baseline_psnr=%f, model1_psnr=%f \r",				i, #x,				math.sqrt(baseline_mse / i), math.sqrt(model1_mse / i),				baseline_psnr / i, model1_psnr / i		  ))	    else	       io.stdout:write(		  string.format("%d/%d; model1_rmse=%f, model1_psnr=%f \r",				i, #x,				math.sqrt(model1_mse / i), model1_psnr / i		  ))	    end	 end	 io.stdout:flush()      end   end   if opt.save_info then      local fp = io.open(path.join(opt.output_dir, "benchmark.txt"), "w")      fp:write("options : " .. cjson.encode(opt) .. "\n")      if baseline_psnr > 0 then	 fp:write(string.format("baseline: RMSE = %.3f, PSNR = %.3f\n",				math.sqrt(baseline_mse / #x), baseline_psnr / #x))      end      if model1_psnr > 0 then	 fp:write(string.format("model1  : RMSE = %.3f, PSNR = %.3f\n",				math.sqrt(model1_mse / #x), model1_psnr / #x))      end      if model2_psnr > 0 then	 fp:write(string.format("model2  : RMSE = %.3f, PSNR = %.3f\n",				math.sqrt(model2_mse / #x), model2_psnr / #x))      end      fp:close()   end   io.stdout:write("\n")endlocal function load_data(test_dir)   local test_x = {}   local files = dir.getfiles(test_dir, "*.*")   for i = 1, #files do      local name = path.basename(files[i])      local e = path.extension(name)      local base = name:sub(0, name:len() - e:len())      local img = image_loader.load_float(files[i])      if img then	 table.insert(test_x, {image = iproc.crop_mod4(img),			       basename = base})      end      if opt.show_progress then	 xlua.progress(i, #files)      end   end   return test_xendfunction load_model(filename)   return torch.load(filename, "ascii")endif opt.show_progress then   print(opt)endif opt.method == "scale" then   local f1 = path.join(opt.model1_dir, "scale2.0x_model.t7")   local f2 = path.join(opt.model2_dir, "scale2.0x_model.t7")   local s1, model1 = pcall(load_model, f1)   local s2, model2 = pcall(load_model, f2)   if not s1 then      error("Load error: " .. f1)   end   if not s2 then      model2 = nil   end   local test_x = load_data(opt.dir)   benchmark(opt, test_x, transform_scale, model1, model2)elseif opt.method == "noise" then   local f1 = path.join(opt.model1_dir, string.format("noise%d_model.t7", opt.noise_level))   local f2 = path.join(opt.model2_dir, string.format("noise%d_model.t7", opt.noise_level))   local s1, model1 = pcall(load_model, f1)   local s2, model2 = pcall(load_model, f2)   if not s1 then      error("Load error: " .. f1)   end   if not s2 then      model2 = nil   end   local test_x = load_data(opt.dir)   benchmark(opt, test_x, transform_jpeg, model1, model2)end
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