benchmark.lua 14 KB

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  1. require 'pl'
  2. local __FILE__ = (function() return string.gsub(debug.getinfo(2, 'S').source, "^@", "") end)()
  3. package.path = path.join(path.dirname(__FILE__), "..", "lib", "?.lua;") .. package.path
  4. require 'xlua'
  5. require 'w2nn'
  6. local iproc = require 'iproc'
  7. local reconstruct = require 'reconstruct'
  8. local image_loader = require 'image_loader'
  9. local gm = require 'graphicsmagick'
  10. local cjson = require 'cjson'
  11. local cmd = torch.CmdLine()
  12. cmd:text()
  13. cmd:text("waifu2x-benchmark")
  14. cmd:text("Options:")
  15. cmd:option("-dir", "./data/test", 'test image directory')
  16. cmd:option("-model1_dir", "./models/anime_style_art_rgb", 'model1 directory')
  17. cmd:option("-model2_dir", "", 'model2 directory (optional)')
  18. cmd:option("-method", "scale", '(scale|noise|noise_scale)')
  19. cmd:option("-filter", "Catrom", "downscaling filter (Box|Lanczos|Catrom(Bicubic))")
  20. cmd:option("-resize_blur", 1.0, 'blur parameter for resize')
  21. cmd:option("-color", "y", '(rgb|y)')
  22. cmd:option("-noise_level", 1, 'model noise level')
  23. cmd:option("-jpeg_quality", 75, 'jpeg quality')
  24. cmd:option("-jpeg_times", 1, 'jpeg compression times')
  25. cmd:option("-jpeg_quality_down", 5, 'value of jpeg quality to decrease each times')
  26. cmd:option("-range_bug", 0, 'Reproducing the dynamic range bug that is caused by MATLAB\'s rgb2ycbcr(1|0)')
  27. cmd:option("-save_image", 0, 'save converted images')
  28. cmd:option("-save_baseline_image", 0, 'save baseline images')
  29. cmd:option("-output_dir", "./", 'output directroy')
  30. cmd:option("-show_progress", 1, 'show progressbar')
  31. cmd:option("-baseline_filter", "Catrom", 'baseline interpolation (Box|Lanczos|Catrom(Bicubic))')
  32. cmd:option("-save_info", 0, 'save score and parameters to benchmark.txt')
  33. cmd:option("-save_all", 0, 'group -save_info, -save_image and -save_baseline_image option')
  34. cmd:option("-thread", -1, 'number of CPU threads')
  35. cmd:option("-tta", 0, 'use tta')
  36. cmd:option("-tta_level", 8, 'tta level')
  37. cmd:option("-crop_size", 128, 'patch size per process')
  38. cmd:option("-batch_size", 1, 'batch_size')
  39. cmd:option("-force_cudnn", 0, 'use cuDNN backend')
  40. cmd:option("-yuv420", 0, 'use yuv420 jpeg')
  41. local function to_bool(settings, name)
  42. if settings[name] == 1 then
  43. settings[name] = true
  44. else
  45. settings[name] = false
  46. end
  47. end
  48. local opt = cmd:parse(arg)
  49. torch.setdefaulttensortype('torch.FloatTensor')
  50. if cudnn then
  51. cudnn.fastest = true
  52. cudnn.benchmark = true
  53. end
  54. to_bool(opt, "force_cudnn")
  55. to_bool(opt, "yuv420")
  56. to_bool(opt, "save_all")
  57. to_bool(opt, "tta")
  58. if opt.save_all then
  59. opt.save_image = true
  60. opt.save_info = true
  61. opt.save_baseline_image = true
  62. else
  63. to_bool(opt, "save_image")
  64. to_bool(opt, "save_info")
  65. to_bool(opt, "save_baseline_image")
  66. end
  67. to_bool(opt, "show_progress")
  68. if opt.thread > 0 then
  69. torch.setnumthreads(tonumber(opt.thread))
  70. end
  71. local function rgb2y_matlab(x)
  72. local y = torch.Tensor(1, x:size(2), x:size(3)):zero()
  73. x = iproc.byte2float(x)
  74. y:add(x[1] * 65.481)
  75. y:add(x[2] * 128.553)
  76. y:add(x[3] * 24.966)
  77. y:add(16.0)
  78. return y:byte():float()
  79. end
  80. local function RGBMSE(x1, x2)
  81. x1 = iproc.float2byte(x1):float()
  82. x2 = iproc.float2byte(x2):float()
  83. return (x1 - x2):pow(2):mean()
  84. end
  85. local function YMSE(x1, x2)
  86. if opt.range_bug == 1 then
  87. local x1_2 = rgb2y_matlab(x1)
  88. local x2_2 = rgb2y_matlab(x2)
  89. return (x1_2 - x2_2):pow(2):mean()
  90. else
  91. local x1_2 = image.rgb2y(x1):mul(255.0)
  92. local x2_2 = image.rgb2y(x2):mul(255.0)
  93. return (x1_2 - x2_2):pow(2):mean()
  94. end
  95. end
  96. local function MSE(x1, x2, color)
  97. if color == "y" then
  98. return YMSE(x1, x2)
  99. else
  100. return RGBMSE(x1, x2)
  101. end
  102. end
  103. local function PSNR(x1, x2, color)
  104. local mse = math.max(MSE(x1, x2, color), 1)
  105. return 10 * math.log10((255.0 * 255.0) / mse)
  106. end
  107. local function MSE2PSNR(mse)
  108. return 10 * math.log10((255.0 * 255.0) / math.max(mse, 1))
  109. end
  110. local function transform_jpeg(x, opt)
  111. for i = 1, opt.jpeg_times do
  112. jpeg = gm.Image(x, "RGB", "DHW")
  113. jpeg:format("jpeg")
  114. if opt.yuv420 then
  115. jpeg:samplingFactors({2.0, 1.0, 1.0})
  116. else
  117. jpeg:samplingFactors({1.0, 1.0, 1.0})
  118. end
  119. blob, len = jpeg:toBlob(opt.jpeg_quality - (i - 1) * opt.jpeg_quality_down)
  120. jpeg:fromBlob(blob, len)
  121. x = jpeg:toTensor("byte", "RGB", "DHW")
  122. end
  123. return iproc.byte2float(x)
  124. end
  125. local function baseline_scale(x, filter)
  126. return iproc.scale(x,
  127. x:size(3) * 2.0,
  128. x:size(2) * 2.0,
  129. filter)
  130. end
  131. local function transform_scale(x, opt)
  132. return iproc.scale(x,
  133. x:size(3) * 0.5,
  134. x:size(2) * 0.5,
  135. opt.filter, opt.resize_blur)
  136. end
  137. local function transform_scale_jpeg(x, opt)
  138. x = iproc.scale(x,
  139. x:size(3) * 0.5,
  140. x:size(2) * 0.5,
  141. opt.filter, opt.resize_blur)
  142. for i = 1, opt.jpeg_times do
  143. jpeg = gm.Image(x, "RGB", "DHW")
  144. jpeg:format("jpeg")
  145. if opt.yuv420 then
  146. jpeg:samplingFactors({2.0, 1.0, 1.0})
  147. else
  148. jpeg:samplingFactors({1.0, 1.0, 1.0})
  149. end
  150. blob, len = jpeg:toBlob(opt.jpeg_quality - (i - 1) * opt.jpeg_quality_down)
  151. jpeg:fromBlob(blob, len)
  152. x = jpeg:toTensor("byte", "RGB", "DHW")
  153. end
  154. return iproc.byte2float(x)
  155. end
  156. local function benchmark(opt, x, input_func, model1, model2)
  157. local mse
  158. local model1_mse = 0
  159. local model2_mse = 0
  160. local baseline_mse = 0
  161. local model1_psnr = 0
  162. local model2_psnr = 0
  163. local baseline_psnr = 0
  164. local model1_time = 0
  165. local model2_time = 0
  166. local scale_f = reconstruct.scale
  167. local image_f = reconstruct.image
  168. if opt.tta then
  169. scale_f = function(model, scale, x, block_size, batch_size)
  170. return reconstruct.scale_tta(model, opt.tta_level,
  171. scale, x, block_size, batch_size)
  172. end
  173. image_f = function(model, x, block_size, batch_size)
  174. return reconstruct.image_tta(model, opt.tta_level,
  175. x, block_size, batch_size)
  176. end
  177. end
  178. for i = 1, #x do
  179. local ground_truth = x[i].image
  180. local basename = x[i].basename
  181. local input, model1_output, model2_output, baseline_output
  182. input = input_func(ground_truth, opt)
  183. if opt.method == "scale" then
  184. t = sys.clock()
  185. model1_output = scale_f(model1, 2.0, input, opt.crop_size, opt.batch_size)
  186. model1_time = model1_time + (sys.clock() - t)
  187. if model2 then
  188. t = sys.clock()
  189. model2_output = scale_f(model2, 2.0, input, opt.crop_size, opt.batch_size)
  190. model2_time = model2_time + (sys.clock() - t)
  191. end
  192. baseline_output = baseline_scale(input, opt.baseline_filter)
  193. elseif opt.method == "noise" then
  194. t = sys.clock()
  195. model1_output = image_f(model1, input, opt.crop_size, opt.batch_size)
  196. model1_time = model1_time + (sys.clock() - t)
  197. if model2 then
  198. t = sys.clock()
  199. model2_output = image_f(model2, input, opt.crop_size, opt.batch_size)
  200. model2_time = model2_time + (sys.clock() - t)
  201. end
  202. baseline_output = input
  203. elseif opt.method == "noise_scale" then
  204. t = sys.clock()
  205. if model1.noise_scale_model then
  206. model1_output = scale_f(model1.noise_scale_model, 2.0,
  207. input, opt.crop_size, opt.batch_size)
  208. else
  209. if model1.noise_model then
  210. model1_output = image_f(model1.noise_model, input, opt.crop_size, opt.batch_size)
  211. else
  212. model1_output = input
  213. end
  214. model1_output = scale_f(model1.scale_model, 2.0, model1_output,
  215. opt.crop_size, opt.batch_size)
  216. end
  217. model1_time = model1_time + (sys.clock() - t)
  218. if model2 then
  219. t = sys.clock()
  220. if model2.noise_scale_model then
  221. model2_output = scale_f(model2.noise_scale_model, 2.0,
  222. input, opt.crop_size, opt.batch_size)
  223. else
  224. if model2.noise_model then
  225. model2_output = image_f(model2.noise_model, input,
  226. opt.crop_size, opt.batch_size)
  227. else
  228. model2_output = input
  229. end
  230. model2_output = scale_f(model2.scale_model, 2.0, model2_output,
  231. opt.crop_size, opt.batch_size)
  232. end
  233. model2_time = model2_time + (sys.clock() - t)
  234. end
  235. baseline_output = baseline_scale(input, opt.baseline_filter)
  236. end
  237. mse = MSE(ground_truth, model1_output, opt.color)
  238. model1_mse = model1_mse + mse
  239. model1_psnr = model1_psnr + MSE2PSNR(mse)
  240. if model2 then
  241. mse = MSE(ground_truth, model2_output, opt.color)
  242. model2_mse = model2_mse + mse
  243. model2_psnr = model2_psnr + MSE2PSNR(mse)
  244. end
  245. if baseline_output then
  246. mse = MSE(ground_truth, baseline_output, opt.color)
  247. baseline_mse = baseline_mse + mse
  248. baseline_psnr = baseline_psnr + MSE2PSNR(mse)
  249. end
  250. if opt.save_image then
  251. if opt.save_baseline_image and baseline_output then
  252. image.save(path.join(opt.output_dir, string.format("%s_baseline.png", basename)),
  253. baseline_output)
  254. end
  255. if model1_output then
  256. image.save(path.join(opt.output_dir, string.format("%s_model1.png", basename)),
  257. model1_output)
  258. end
  259. if model2_output then
  260. image.save(path.join(opt.output_dir, string.format("%s_model2.png", basename)),
  261. model2_output)
  262. end
  263. end
  264. if opt.show_progress or i == #x then
  265. if model2 then
  266. if baseline_output then
  267. io.stdout:write(
  268. string.format("%d/%d; model1_time=%.2f, model2_time=%.2f, baseline_rmse=%f, model1_rmse=%f, model2_rmse=%f, baseline_psnr=%f, model1_psnr=%f, model2_psnr=%f \r",
  269. i, #x,
  270. model1_time,
  271. model2_time,
  272. math.sqrt(baseline_mse / i),
  273. math.sqrt(model1_mse / i), math.sqrt(model2_mse / i),
  274. baseline_psnr / i,
  275. model1_psnr / i, model2_psnr / i
  276. ))
  277. else
  278. io.stdout:write(
  279. string.format("%d/%d; model1_time=%.2f, model2_time=%.2f, model1_rmse=%f, model2_rmse=%f, model1_psnr=%f, model2_psnr=%f \r",
  280. i, #x,
  281. model1_time,
  282. model2_time,
  283. math.sqrt(model1_mse / i), math.sqrt(model2_mse / i),
  284. model1_psnr / i, model2_psnr / i
  285. ))
  286. end
  287. else
  288. if baseline_output then
  289. io.stdout:write(
  290. string.format("%d/%d; model1_time=%.2f, baseline_rmse=%f, model1_rmse=%f, baseline_psnr=%f, model1_psnr=%f \r",
  291. i, #x,
  292. model1_time,
  293. math.sqrt(baseline_mse / i), math.sqrt(model1_mse / i),
  294. baseline_psnr / i, model1_psnr / i
  295. ))
  296. else
  297. io.stdout:write(
  298. string.format("%d/%d; model1_time=%.2f, model1_rmse=%f, model1_psnr=%f \r",
  299. i, #x,
  300. model1_time,
  301. math.sqrt(model1_mse / i), model1_psnr / i
  302. ))
  303. end
  304. end
  305. io.stdout:flush()
  306. end
  307. end
  308. if opt.save_info then
  309. local fp = io.open(path.join(opt.output_dir, "benchmark.txt"), "w")
  310. fp:write("options : " .. cjson.encode(opt) .. "\n")
  311. if baseline_psnr > 0 then
  312. fp:write(string.format("baseline: RMSE = %.3f, PSNR = %.3f\n",
  313. math.sqrt(baseline_mse / #x), baseline_psnr / #x))
  314. end
  315. if model1_psnr > 0 then
  316. fp:write(string.format("model1 : RMSE = %.3f, PSNR = %.3f, evaluation time = %.3f\n",
  317. math.sqrt(model1_mse / #x), model1_psnr / #x, model1_time))
  318. end
  319. if model2_psnr > 0 then
  320. fp:write(string.format("model2 : RMSE = %.3f, PSNR = %.3f, evaluation time = %.3f\n",
  321. math.sqrt(model2_mse / #x), model2_psnr / #x, model2_time))
  322. end
  323. fp:close()
  324. end
  325. io.stdout:write("\n")
  326. end
  327. local function load_data(test_dir)
  328. local test_x = {}
  329. local files = dir.getfiles(test_dir, "*.*")
  330. for i = 1, #files do
  331. local name = path.basename(files[i])
  332. local e = path.extension(name)
  333. local base = name:sub(0, name:len() - e:len())
  334. local img = image_loader.load_float(files[i])
  335. if img then
  336. table.insert(test_x, {image = iproc.crop_mod4(img),
  337. basename = base})
  338. end
  339. if opt.show_progress then
  340. xlua.progress(i, #files)
  341. end
  342. end
  343. return test_x
  344. end
  345. function load_noise_scale_model(model_dir, noise_level, force_cudnn)
  346. local f = path.join(model_dir, string.format("noise%d_scale2.0x_model.t7", opt.noise_level))
  347. local s1, noise_scale = pcall(w2nn.load_model, f, force_cudnn)
  348. local model = {}
  349. if not s1 then
  350. f = path.join(model_dir, string.format("noise%d_model.t7", opt.noise_level))
  351. local noise
  352. s1, noise = pcall(w2nn.load_model, f, force_cudnn)
  353. if not s1 then
  354. model.noise_model = nil
  355. print(model_dir .. "'s noise model is not found. benchmark will use only scale model.")
  356. else
  357. model.noise_model = noise
  358. end
  359. f = path.join(model_dir, "scale2.0x_model.t7")
  360. local scale
  361. s1, scale = pcall(w2nn.load_model, f, force_cudnn)
  362. if not s1 then
  363. error(model_dir .. ": load error")
  364. return nil
  365. end
  366. model.scale_model = scale
  367. else
  368. model.noise_scale_model = noise_scale
  369. end
  370. return model
  371. end
  372. if opt.show_progress then
  373. print(opt)
  374. end
  375. if opt.method == "scale" then
  376. local f1 = path.join(opt.model1_dir, "scale2.0x_model.t7")
  377. local f2 = path.join(opt.model2_dir, "scale2.0x_model.t7")
  378. local s1, model1 = pcall(w2nn.load_model, f1, opt.force_cudnn)
  379. local s2, model2 = pcall(w2nn.load_model, f2, opt.force_cudnn)
  380. if not s1 then
  381. error("Load error: " .. f1)
  382. end
  383. if not s2 then
  384. model2 = nil
  385. end
  386. local test_x = load_data(opt.dir)
  387. benchmark(opt, test_x, transform_scale, model1, model2)
  388. elseif opt.method == "noise" then
  389. local f1 = path.join(opt.model1_dir, string.format("noise%d_model.t7", opt.noise_level))
  390. local f2 = path.join(opt.model2_dir, string.format("noise%d_model.t7", opt.noise_level))
  391. local s1, model1 = pcall(w2nn.load_model, f1, opt.force_cudnn)
  392. local s2, model2 = pcall(w2nn.load_model, f2, opt.force_cudnn)
  393. if not s1 then
  394. error("Load error: " .. f1)
  395. end
  396. if not s2 then
  397. model2 = nil
  398. end
  399. local test_x = load_data(opt.dir)
  400. benchmark(opt, test_x, transform_jpeg, model1, model2)
  401. elseif opt.method == "noise_scale" then
  402. local model2 = nil
  403. local model1 = load_noise_scale_model(opt.model1_dir, opt.noise_level, opt.force_cudnn)
  404. if opt.model2_dir:len() > 0 then
  405. model2 = load_noise_scale_model(opt.model2_dir, opt.noise_level, opt.force_cudnn)
  406. end
  407. local test_x = load_data(opt.dir)
  408. benchmark(opt, test_x, transform_scale_jpeg, model1, model2)
  409. end