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test_squeezenet.cpp 15 kB

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  1. // Tencent is pleased to support the open source community by making ncnn available.
  2. //
  3. // Copyright (C) 2020 THL A29 Limited, a Tencent company. All rights reserved.
  4. //
  5. // Licensed under the BSD 3-Clause License (the "License"); you may not use this file except
  6. // in compliance with the License. You may obtain a copy of the License at
  7. //
  8. // https://opensource.org/licenses/BSD-3-Clause
  9. //
  10. // Unless required by applicable law or agreed to in writing, software distributed
  11. // under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR
  12. // CONDITIONS OF ANY KIND, either express or implied. See the License for the
  13. // specific language governing permissions and limitations under the License.
  14. #include "platform.h"
  15. #include "net.h"
  16. #include "testutil.h"
  17. #include <stdio.h>
  18. #ifdef __EMSCRIPTEN__
  19. #include <emscripten.h>
  20. #endif
  21. static ncnn::Mat generate_ncnn_logo(int pixel_type_to, int w, int h)
  22. {
  23. // clang-format off
  24. // *INDENT-OFF*
  25. static const unsigned char ncnn_logo_data[16][16] =
  26. {
  27. {245, 245, 33, 245, 245, 245, 245, 245, 245, 245, 245, 245, 245, 33, 245, 245},
  28. {245, 33, 33, 33, 245, 245, 245, 245, 245, 245, 245, 245, 33, 33, 33, 245},
  29. {245, 33, 158, 158, 33, 245, 245, 245, 245, 245, 245, 33, 158, 158, 33, 245},
  30. { 33, 117, 158, 224, 158, 33, 245, 245, 245, 245, 33, 158, 224, 158, 117, 33},
  31. { 33, 117, 224, 224, 224, 66, 33, 33, 33, 33, 66, 224, 224, 224, 117, 33},
  32. { 33, 189, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 189, 33},
  33. { 33, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 224, 33},
  34. { 33, 224, 224, 97, 97, 97, 97, 224, 224, 97, 97, 97, 97, 224, 224, 33},
  35. { 33, 224, 224, 97, 33, 0, 189, 224, 224, 97, 0, 33, 97, 224, 224, 33},
  36. { 33, 224, 224, 97, 33, 0, 189, 224, 224, 97, 0, 33, 97, 224, 224, 33},
  37. { 33, 224, 224, 97, 97, 97, 97, 224, 224, 97, 189, 189, 97, 224, 224, 33},
  38. { 33, 66, 66, 66, 224, 224, 224, 224, 224, 224, 224, 224, 66, 66, 66, 33},
  39. { 66, 158, 158, 66, 66, 224, 224, 224, 224, 224, 224, 66, 158, 158, 66, 66},
  40. { 66, 158, 158, 208, 66, 224, 224, 224, 224, 224, 224, 66, 158, 158, 208, 66},
  41. { 66, 224, 202, 158, 66, 224, 224, 224, 224, 224, 224, 66, 224, 202, 158, 66},
  42. { 66, 158, 224, 158, 66, 224, 224, 224, 224, 224, 224, 66, 158, 224, 158, 66}
  43. };
  44. // *INDENT-ON*
  45. // clang-format on
  46. const unsigned char* p_ncnn_logo_data = (const unsigned char*)ncnn_logo_data;
  47. ncnn::Mat logo = ncnn::Mat::from_pixels(p_ncnn_logo_data, ncnn::Mat::PIXEL_GRAY | (pixel_type_to << ncnn::Mat::PIXEL_CONVERT_SHIFT), 16, 16);
  48. ncnn::Mat m;
  49. ncnn::Option opt;
  50. opt.num_threads = 1;
  51. ncnn::resize_nearest(logo, m, w, h, opt);
  52. return m;
  53. }
  54. struct compare_score_index
  55. {
  56. inline bool operator()(const std::pair<float, int>& a, const std::pair<float, int>& b)
  57. {
  58. return a.first > b.first;
  59. }
  60. };
  61. static int check_top2(const std::vector<float>& cls_scores, float epsilon = 0.001)
  62. {
  63. // partial sort topk with index
  64. int size = cls_scores.size();
  65. std::vector<std::pair<float, int> > vec;
  66. vec.resize(size);
  67. for (int i = 0; i < size; i++)
  68. {
  69. vec[i] = std::make_pair(cls_scores[i], i);
  70. }
  71. std::partial_sort(vec.begin(), vec.begin() + 2, vec.end(), compare_score_index());
  72. int expect_indexes[2] = {532, 920};
  73. float expect_scores[2] = {0.189459f, 0.082801f};
  74. for (int i = 0; i < 2; i++)
  75. {
  76. int index = vec[i].second;
  77. float score = vec[i].first;
  78. if (index != expect_indexes[i])
  79. {
  80. fprintf(stderr, "top %d index not match expect %d but got %d\n", i, expect_indexes[i], index);
  81. return -1;
  82. }
  83. if (!NearlyEqual(score, expect_scores[i], epsilon))
  84. {
  85. fprintf(stderr, "top %d score not match expect %f but got %f\n", i, expect_scores[i], score);
  86. return -1;
  87. }
  88. }
  89. return 0;
  90. }
  91. static void fread_or_error(void* buffer, size_t size, size_t count, FILE* fp, const char* s)
  92. {
  93. if (count != fread(buffer, size, count, fp))
  94. {
  95. fprintf(stderr, "Couldn't read from file: %s\n", s);
  96. fclose(fp);
  97. exit(EXIT_FAILURE);
  98. }
  99. }
  100. static std::string read_file_string(const char* filepath)
  101. {
  102. FILE* fp = fopen(filepath, "rb");
  103. if (!fp)
  104. {
  105. fprintf(stderr, "fopen %s failed\n", filepath);
  106. return std::string();
  107. }
  108. fseek(fp, 0, SEEK_END);
  109. int len = ftell(fp);
  110. rewind(fp);
  111. std::string s;
  112. s.resize(len + 1); // +1 for '\0'
  113. fread_or_error((char*)s.c_str(), 1, len, fp, filepath);
  114. fclose(fp);
  115. s[len] = '\0';
  116. return s;
  117. }
  118. static ncnn::Mat read_file_content(const char* filepath)
  119. {
  120. FILE* fp = fopen(filepath, "rb");
  121. if (!fp)
  122. {
  123. fprintf(stderr, "fopen %s failed\n", filepath);
  124. return ncnn::Mat();
  125. }
  126. fseek(fp, 0, SEEK_END);
  127. int len = ftell(fp);
  128. rewind(fp);
  129. ncnn::Mat m(len, (size_t)1u, 1);
  130. fread_or_error(m, 1, len, fp, filepath);
  131. fclose(fp);
  132. return m;
  133. }
  134. static int test_squeezenet(const ncnn::Option& opt, int load_model_type, float epsilon = 0.001)
  135. {
  136. ncnn::Net squeezenet;
  137. squeezenet.opt = opt;
  138. #ifdef __EMSCRIPTEN__
  139. #define MODEL_DIR "/working"
  140. #else
  141. #define MODEL_DIR "../../examples"
  142. #endif
  143. std::string param_str;
  144. ncnn::Mat param_data;
  145. ncnn::Mat model_data;
  146. if (load_model_type == 0)
  147. {
  148. // load from plain model file
  149. squeezenet.load_param(MODEL_DIR "/squeezenet_v1.1.param");
  150. // test random feature disabled bits
  151. {
  152. std::vector<ncnn::Layer*>& layers = squeezenet.mutable_layers();
  153. for (size_t i = 0; i < layers.size(); i++)
  154. {
  155. layers[i]->featmask = i * 11 % 128;
  156. }
  157. }
  158. squeezenet.load_model(MODEL_DIR "/squeezenet_v1.1.bin");
  159. }
  160. if (load_model_type == 1)
  161. {
  162. // load from plain model memory
  163. param_str = read_file_string(MODEL_DIR "/squeezenet_v1.1.param");
  164. model_data = read_file_content(MODEL_DIR "/squeezenet_v1.1.bin");
  165. squeezenet.load_param_mem((const char*)param_str.c_str());
  166. squeezenet.load_model((const unsigned char*)model_data);
  167. }
  168. if (load_model_type == 2)
  169. {
  170. // load from binary model file
  171. squeezenet.load_param_bin(MODEL_DIR "/squeezenet_v1.1.param.bin");
  172. squeezenet.load_model(MODEL_DIR "/squeezenet_v1.1.bin");
  173. }
  174. if (load_model_type == 3)
  175. {
  176. // load from binary model memory
  177. param_data = read_file_content(MODEL_DIR "/squeezenet_v1.1.param.bin");
  178. model_data = read_file_content(MODEL_DIR "/squeezenet_v1.1.bin");
  179. squeezenet.load_param((const unsigned char*)param_data);
  180. squeezenet.load_model((const unsigned char*)model_data);
  181. }
  182. ncnn::Mat in = generate_ncnn_logo(ncnn::Mat::PIXEL_BGR, 227, 227);
  183. const float mean_vals[3] = {104.f, 117.f, 123.f};
  184. in.substract_mean_normalize(mean_vals, 0);
  185. ncnn::Extractor ex = squeezenet.create_extractor();
  186. ncnn::Mat out;
  187. if (load_model_type == 0 || load_model_type == 1)
  188. {
  189. ex.input("data", in);
  190. ex.extract("prob", out);
  191. }
  192. if (load_model_type == 2 || load_model_type == 3)
  193. {
  194. ex.input(0, in);
  195. ex.extract(82, out);
  196. }
  197. std::vector<float> cls_scores;
  198. cls_scores.resize(out.w);
  199. for (int j = 0; j < out.w; j++)
  200. {
  201. cls_scores[j] = out[j];
  202. }
  203. return check_top2(cls_scores, epsilon);
  204. }
  205. class MySoftmax : public ncnn::Layer
  206. {
  207. public:
  208. MySoftmax()
  209. {
  210. one_blob_only = true;
  211. support_inplace = true;
  212. }
  213. virtual int forward_inplace(ncnn::Mat& bottom_top_blob, const ncnn::Option& /*opt*/) const
  214. {
  215. bottom_top_blob.fill(0.f);
  216. bottom_top_blob[123] = 0.5f;
  217. bottom_top_blob[456] = 0.1f;
  218. return 0;
  219. }
  220. };
  221. DEFINE_LAYER_CREATOR(MySoftmax)
  222. static int test_squeezenet_overwrite_softmax(const ncnn::Option& opt, int load_model_type, float epsilon = 0.001)
  223. {
  224. ncnn::Net squeezenet;
  225. squeezenet.opt = opt;
  226. #ifdef __EMSCRIPTEN__
  227. #define MODEL_DIR "/working"
  228. #else
  229. #define MODEL_DIR "../../examples"
  230. #endif
  231. std::string param_str;
  232. ncnn::Mat param_data;
  233. ncnn::Mat model_data;
  234. if (load_model_type == 0)
  235. {
  236. // load from plain model file
  237. squeezenet.register_custom_layer("Softmax", MySoftmax_layer_creator);
  238. squeezenet.load_param(MODEL_DIR "/squeezenet_v1.1.param");
  239. // test random feature disabled bits
  240. {
  241. std::vector<ncnn::Layer*>& layers = squeezenet.mutable_layers();
  242. for (size_t i = 0; i < layers.size(); i++)
  243. {
  244. layers[i]->featmask = i * 11 % 128;
  245. }
  246. }
  247. squeezenet.load_model(MODEL_DIR "/squeezenet_v1.1.bin");
  248. }
  249. if (load_model_type == 1)
  250. {
  251. // load from plain model memory
  252. squeezenet.register_custom_layer("Softmax", MySoftmax_layer_creator);
  253. param_str = read_file_string(MODEL_DIR "/squeezenet_v1.1.param");
  254. model_data = read_file_content(MODEL_DIR "/squeezenet_v1.1.bin");
  255. squeezenet.load_param_mem((const char*)param_str.c_str());
  256. squeezenet.load_model((const unsigned char*)model_data);
  257. }
  258. if (load_model_type == 2)
  259. {
  260. // load from binary model file
  261. squeezenet.register_custom_layer(ncnn::layer_to_index("Softmax"), MySoftmax_layer_creator);
  262. squeezenet.load_param_bin(MODEL_DIR "/squeezenet_v1.1.param.bin");
  263. squeezenet.load_model(MODEL_DIR "/squeezenet_v1.1.bin");
  264. }
  265. if (load_model_type == 3)
  266. {
  267. // load from binary model memory
  268. squeezenet.register_custom_layer(ncnn::layer_to_index("Softmax"), MySoftmax_layer_creator);
  269. param_data = read_file_content(MODEL_DIR "/squeezenet_v1.1.param.bin");
  270. model_data = read_file_content(MODEL_DIR "/squeezenet_v1.1.bin");
  271. squeezenet.load_param((const unsigned char*)param_data);
  272. squeezenet.load_model((const unsigned char*)model_data);
  273. }
  274. ncnn::Mat in = generate_ncnn_logo(ncnn::Mat::PIXEL_BGR, 227, 227);
  275. const float mean_vals[3] = {104.f, 117.f, 123.f};
  276. in.substract_mean_normalize(mean_vals, 0);
  277. ncnn::Extractor ex = squeezenet.create_extractor();
  278. ncnn::Mat out;
  279. if (load_model_type == 0 || load_model_type == 1)
  280. {
  281. ex.input("data", in);
  282. ex.extract("prob", out);
  283. }
  284. if (load_model_type == 2 || load_model_type == 3)
  285. {
  286. ex.input(0, in);
  287. ex.extract(82, out);
  288. }
  289. std::vector<float> cls_scores;
  290. cls_scores.resize(out.w);
  291. for (int j = 0; j < out.w; j++)
  292. {
  293. cls_scores[j] = out[j];
  294. }
  295. return cls_scores[123] == 0.5f && cls_scores[456] == 0.1f ? 0 : -1;
  296. }
  297. int main()
  298. {
  299. SRAND(7767517);
  300. #ifdef __EMSCRIPTEN__
  301. EM_ASM(
  302. FS.mkdir('/working');
  303. FS.mount(NODEFS, {root: '../../examples'}, '/working'););
  304. #endif // __EMSCRIPTEN__
  305. ncnn::UnlockedPoolAllocator g_blob_pool_allocator;
  306. ncnn::PoolAllocator g_workspace_pool_allocator;
  307. ncnn::Option opts[4];
  308. opts[0].use_packing_layout = false;
  309. opts[0].use_fp16_packed = false;
  310. opts[0].use_fp16_storage = false;
  311. opts[0].use_fp16_arithmetic = false;
  312. opts[0].use_shader_pack8 = false;
  313. opts[0].use_image_storage = false;
  314. opts[1].use_packing_layout = true;
  315. opts[1].use_fp16_packed = true;
  316. opts[1].use_fp16_storage = false;
  317. opts[1].use_fp16_arithmetic = false;
  318. opts[1].use_shader_pack8 = true;
  319. opts[1].use_image_storage = false;
  320. opts[2].use_packing_layout = true;
  321. opts[2].use_fp16_packed = true;
  322. opts[2].use_fp16_storage = true;
  323. opts[2].use_fp16_arithmetic = false;
  324. opts[2].use_bf16_storage = false; // FIXME enable me
  325. opts[2].use_shader_pack8 = true;
  326. opts[2].use_image_storage = true;
  327. opts[2].blob_allocator = &g_blob_pool_allocator;
  328. opts[2].workspace_allocator = &g_workspace_pool_allocator;
  329. opts[3].use_packing_layout = true;
  330. opts[3].use_fp16_packed = true;
  331. opts[3].use_fp16_storage = true;
  332. opts[3].use_fp16_arithmetic = false; // FIXME enable me
  333. opts[3].use_bf16_storage = false;
  334. opts[3].use_shader_pack8 = true;
  335. opts[3].use_image_storage = true;
  336. opts[3].blob_allocator = &g_blob_pool_allocator;
  337. opts[3].workspace_allocator = &g_workspace_pool_allocator;
  338. int load_model_types[4] = {0, 1, 2, 3};
  339. for (int i = 0; i < 4; i++)
  340. {
  341. opts[i].num_threads = 1;
  342. }
  343. for (int i = 0; i < 4; i++)
  344. {
  345. const ncnn::Option& opt = opts[i];
  346. float epsilon;
  347. if (opt.use_bf16_storage || opt.use_fp16_packed || opt.use_fp16_storage)
  348. {
  349. epsilon = 0.1;
  350. }
  351. else
  352. {
  353. epsilon = 0.01;
  354. }
  355. int ret;
  356. ncnn::Option opt_cpu = opt;
  357. opt_cpu.use_vulkan_compute = false;
  358. ret = test_squeezenet(opt_cpu, load_model_types[i], epsilon);
  359. if (ret != 0)
  360. {
  361. fprintf(stderr, "test_squeezenet cpu failed use_packing_layout=%d use_fp16_packed=%d use_fp16_storage=%d use_shader_pack8=%d use_bf16_storage=%d use_image_storage=%d\n", opt.use_packing_layout, opt.use_fp16_packed, opt.use_fp16_storage, opt.use_shader_pack8, opt.use_bf16_storage, opt.use_image_storage);
  362. return ret;
  363. }
  364. #if NCNN_VULKAN
  365. ncnn::Option opt_gpu = opt;
  366. opt_gpu.use_vulkan_compute = true;
  367. ret = test_squeezenet(opt_gpu, load_model_types[i], epsilon);
  368. if (ret != 0)
  369. {
  370. fprintf(stderr, "test_squeezenet gpu failed use_packing_layout=%d use_fp16_packed=%d use_fp16_storage=%d use_shader_pack8=%d use_bf16_storage=%d use_image_storage=%d\n", opt.use_packing_layout, opt.use_fp16_packed, opt.use_fp16_storage, opt.use_shader_pack8, opt.use_bf16_storage, opt.use_image_storage);
  371. return ret;
  372. }
  373. #endif // NCNN_VULKAN
  374. ret = test_squeezenet_overwrite_softmax(opt_cpu, load_model_types[i], epsilon);
  375. if (ret != 0)
  376. {
  377. fprintf(stderr, "test_squeezenet_overwrite_softmax cpu failed use_packing_layout=%d use_fp16_packed=%d use_fp16_storage=%d use_shader_pack8=%d use_bf16_storage=%d use_image_storage=%d\n", opt.use_packing_layout, opt.use_fp16_packed, opt.use_fp16_storage, opt.use_shader_pack8, opt.use_bf16_storage, opt.use_image_storage);
  378. return ret;
  379. }
  380. #if NCNN_VULKAN
  381. ret = test_squeezenet_overwrite_softmax(opt_gpu, load_model_types[i], epsilon);
  382. if (ret != 0)
  383. {
  384. fprintf(stderr, "test_squeezenet_overwrite_softmax gpu failed use_packing_layout=%d use_fp16_packed=%d use_fp16_storage=%d use_shader_pack8=%d use_bf16_storage=%d use_image_storage=%d\n", opt.use_packing_layout, opt.use_fp16_packed, opt.use_fp16_storage, opt.use_shader_pack8, opt.use_bf16_storage, opt.use_image_storage);
  385. return ret;
  386. }
  387. #endif // NCNN_VULKAN
  388. }
  389. return 0;
  390. }