You can not select more than 25 topics Topics must start with a chinese character,a letter or number, can include dashes ('-') and can be up to 35 characters long.

yolov8_seg.cpp 19 kB

123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360361362363364365366367368369370371372373374375376377378379380381382383384385386387388389390391392393394395396397398399400401402403404405406407408409410411412413414415416417418419420421422423424425426427428429430431432433434435436437438439440441442443444445446447448449450451452453454455456457458459460461462463464465466467468469470471472473474475476477478479480481482483484485486487488489490491492493494495496497498499500501502503504505506507508509510511512513514515516517518519520521522523524525526527528529530531532533534535536537538539540541542543544545546547548549550551552553554555556557558559560561562563564565566567568569570571572573574575576577578579580581582583584585586587588589590591592593594595596597598599600601602603604605606607608609610611612613
  1. // Copyright 2024 Tencent
  2. // SPDX-License-Identifier: BSD-3-Clause
  3. // 1. install
  4. // pip3 install -U ultralytics pnnx ncnn
  5. // 2. export yolov8-seg torchscript
  6. // yolo export model=yolov8n-seg.pt format=torchscript
  7. // 3. convert torchscript with static shape
  8. // pnnx yolov8n-seg.torchscript
  9. // 4. modify yolov8n_seg_pnnx.py for dynamic shape inference
  10. // A. modify reshape to support dynamic image sizes
  11. // B. permute tensor before concat and adjust concat axis
  12. // C. drop post-process part
  13. // before:
  14. // v_144 = v_143.view(1, 32, 6400)
  15. // v_150 = v_149.view(1, 32, 1600)
  16. // v_156 = v_155.view(1, 32, 400)
  17. // v_157 = torch.cat((v_144, v_150, v_156), dim=2)
  18. // ...
  19. // v_191 = v_168.view(1, 144, 6400)
  20. // v_192 = v_179.view(1, 144, 1600)
  21. // v_193 = v_190.view(1, 144, 400)
  22. // v_194 = torch.cat((v_191, v_192, v_193), dim=2)
  23. // ...
  24. // v_215 = (v_214, v_138, )
  25. // return v_215
  26. // after:
  27. // v_144 = v_143.view(1, 32, -1).transpose(1, 2)
  28. // v_150 = v_149.view(1, 32, -1).transpose(1, 2)
  29. // v_156 = v_155.view(1, 32, -1).transpose(1, 2)
  30. // v_157 = torch.cat((v_144, v_150, v_156), dim=1)
  31. // ...
  32. // v_191 = v_168.view(1, 144, -1).transpose(1, 2)
  33. // v_192 = v_179.view(1, 144, -1).transpose(1, 2)
  34. // v_193 = v_190.view(1, 144, -1).transpose(1, 2)
  35. // v_194 = torch.cat((v_191, v_192, v_193), dim=1)
  36. // return v_194, v_157, v_138
  37. // 5. re-export yolov8-seg torchscript
  38. // python3 -c 'import yolov8n_seg_pnnx; yolov8n_seg_pnnx.export_torchscript()'
  39. // 6. convert new torchscript with dynamic shape
  40. // pnnx yolov8n_seg_pnnx.py.pt inputshape=[1,3,640,640] inputshape2=[1,3,320,320]
  41. // 7. now you get ncnn model files
  42. // mv yolov8n_seg_pnnx.py.ncnn.param yolov8n_seg.ncnn.param
  43. // mv yolov8n_seg_pnnx.py.ncnn.bin yolov8n_seg.ncnn.bin
  44. // the out blob would be a 2-dim tensor with w=176 h=8400
  45. //
  46. // | bbox-reg 16 x 4 | per-class scores(80) |
  47. // +-----+-----+-----+-----+----------------------+
  48. // | dx0 | dy0 | dx1 | dy1 |0.1 0.0 0.0 0.5 ......|
  49. // all /| | | | | . |
  50. // boxes | .. | .. | .. | .. |0.0 0.9 0.0 0.0 ......|
  51. // (8400)| | | | | . |
  52. // \| | | | | . |
  53. // +-----+-----+-----+-----+----------------------+
  54. //
  55. //
  56. // | mask (32) |
  57. // +-----------+
  58. // |0.1........|
  59. // all /| |
  60. // boxes |0.0........|
  61. // (8400)| . |
  62. // \| . |
  63. // +-----------+
  64. //
  65. #include "layer.h"
  66. #include "net.h"
  67. #if defined(USE_NCNN_SIMPLEOCV)
  68. #include "simpleocv.h"
  69. #else
  70. #include <opencv2/core/core.hpp>
  71. #include <opencv2/highgui/highgui.hpp>
  72. #include <opencv2/imgproc/imgproc.hpp>
  73. #endif
  74. #include <float.h>
  75. #include <stdio.h>
  76. #include <vector>
  77. struct Object
  78. {
  79. cv::Rect_<float> rect;
  80. int label;
  81. float prob;
  82. int gindex;
  83. cv::Mat mask;
  84. };
  85. static inline float intersection_area(const Object& a, const Object& b)
  86. {
  87. cv::Rect_<float> inter = a.rect & b.rect;
  88. return inter.area();
  89. }
  90. static void qsort_descent_inplace(std::vector<Object>& objects, int left, int right)
  91. {
  92. int i = left;
  93. int j = right;
  94. float p = objects[(left + right) / 2].prob;
  95. while (i <= j)
  96. {
  97. while (objects[i].prob > p)
  98. i++;
  99. while (objects[j].prob < p)
  100. j--;
  101. if (i <= j)
  102. {
  103. // swap
  104. std::swap(objects[i], objects[j]);
  105. i++;
  106. j--;
  107. }
  108. }
  109. // #pragma omp parallel sections
  110. {
  111. // #pragma omp section
  112. {
  113. if (left < j) qsort_descent_inplace(objects, left, j);
  114. }
  115. // #pragma omp section
  116. {
  117. if (i < right) qsort_descent_inplace(objects, i, right);
  118. }
  119. }
  120. }
  121. static void qsort_descent_inplace(std::vector<Object>& objects)
  122. {
  123. if (objects.empty())
  124. return;
  125. qsort_descent_inplace(objects, 0, objects.size() - 1);
  126. }
  127. static void nms_sorted_bboxes(const std::vector<Object>& objects, std::vector<int>& picked, float nms_threshold, bool agnostic = false)
  128. {
  129. picked.clear();
  130. const int n = objects.size();
  131. std::vector<float> areas(n);
  132. for (int i = 0; i < n; i++)
  133. {
  134. areas[i] = objects[i].rect.area();
  135. }
  136. for (int i = 0; i < n; i++)
  137. {
  138. const Object& a = objects[i];
  139. int keep = 1;
  140. for (int j = 0; j < (int)picked.size(); j++)
  141. {
  142. const Object& b = objects[picked[j]];
  143. if (!agnostic && a.label != b.label)
  144. continue;
  145. // intersection over union
  146. float inter_area = intersection_area(a, b);
  147. float union_area = areas[i] + areas[picked[j]] - inter_area;
  148. // float IoU = inter_area / union_area
  149. if (inter_area / union_area > nms_threshold)
  150. keep = 0;
  151. }
  152. if (keep)
  153. picked.push_back(i);
  154. }
  155. }
  156. static inline float sigmoid(float x)
  157. {
  158. return 1.0f / (1.0f + expf(-x));
  159. }
  160. static void generate_proposals(const ncnn::Mat& pred, int stride, const ncnn::Mat& in_pad, float prob_threshold, std::vector<Object>& objects)
  161. {
  162. const int w = in_pad.w;
  163. const int h = in_pad.h;
  164. const int num_grid_x = w / stride;
  165. const int num_grid_y = h / stride;
  166. const int reg_max_1 = 16;
  167. const int num_class = pred.w - reg_max_1 * 4; // number of classes. 80 for COCO
  168. for (int y = 0; y < num_grid_y; y++)
  169. {
  170. for (int x = 0; x < num_grid_x; x++)
  171. {
  172. const ncnn::Mat pred_grid = pred.row_range(y * num_grid_x + x, 1);
  173. // find label with max score
  174. int label = -1;
  175. float score = -FLT_MAX;
  176. {
  177. const ncnn::Mat pred_score = pred_grid.range(reg_max_1 * 4, num_class);
  178. for (int k = 0; k < num_class; k++)
  179. {
  180. float s = pred_score[k];
  181. if (s > score)
  182. {
  183. label = k;
  184. score = s;
  185. }
  186. }
  187. score = sigmoid(score);
  188. }
  189. if (score >= prob_threshold)
  190. {
  191. ncnn::Mat pred_bbox = pred_grid.range(0, reg_max_1 * 4).reshape(reg_max_1, 4).clone();
  192. {
  193. ncnn::Layer* softmax = ncnn::create_layer("Softmax");
  194. ncnn::ParamDict pd;
  195. pd.set(0, 1); // axis
  196. pd.set(1, 1);
  197. softmax->load_param(pd);
  198. ncnn::Option opt;
  199. opt.num_threads = 1;
  200. opt.use_packing_layout = false;
  201. softmax->create_pipeline(opt);
  202. softmax->forward_inplace(pred_bbox, opt);
  203. softmax->destroy_pipeline(opt);
  204. delete softmax;
  205. }
  206. float pred_ltrb[4];
  207. for (int k = 0; k < 4; k++)
  208. {
  209. float dis = 0.f;
  210. const float* dis_after_sm = pred_bbox.row(k);
  211. for (int l = 0; l < reg_max_1; l++)
  212. {
  213. dis += l * dis_after_sm[l];
  214. }
  215. pred_ltrb[k] = dis * stride;
  216. }
  217. float pb_cx = (x + 0.5f) * stride;
  218. float pb_cy = (y + 0.5f) * stride;
  219. float x0 = pb_cx - pred_ltrb[0];
  220. float y0 = pb_cy - pred_ltrb[1];
  221. float x1 = pb_cx + pred_ltrb[2];
  222. float y1 = pb_cy + pred_ltrb[3];
  223. Object obj;
  224. obj.rect.x = x0;
  225. obj.rect.y = y0;
  226. obj.rect.width = x1 - x0;
  227. obj.rect.height = y1 - y0;
  228. obj.label = label;
  229. obj.prob = score;
  230. obj.gindex = y * num_grid_x + x;
  231. objects.push_back(obj);
  232. }
  233. }
  234. }
  235. }
  236. static void generate_proposals(const ncnn::Mat& pred, const std::vector<int>& strides, const ncnn::Mat& in_pad, float prob_threshold, std::vector<Object>& objects)
  237. {
  238. const int w = in_pad.w;
  239. const int h = in_pad.h;
  240. int pred_row_offset = 0;
  241. for (size_t i = 0; i < strides.size(); i++)
  242. {
  243. const int stride = strides[i];
  244. const int num_grid_x = w / stride;
  245. const int num_grid_y = h / stride;
  246. const int num_grid = num_grid_x * num_grid_y;
  247. std::vector<Object> objects_stride;
  248. generate_proposals(pred.row_range(pred_row_offset, num_grid), stride, in_pad, prob_threshold, objects_stride);
  249. for (size_t j = 0; j < objects_stride.size(); j++)
  250. {
  251. Object obj = objects_stride[j];
  252. obj.gindex += pred_row_offset;
  253. objects.push_back(obj);
  254. }
  255. pred_row_offset += num_grid;
  256. }
  257. }
  258. static int detect_yolov8_seg(const cv::Mat& bgr, std::vector<Object>& objects)
  259. {
  260. ncnn::Net yolov8;
  261. yolov8.opt.use_vulkan_compute = true;
  262. // yolov8.opt.use_bf16_storage = true;
  263. // https://github.com/nihui/ncnn-android-yolov8/tree/master/app/src/main/assets
  264. yolov8.load_param("yolov8n_seg.ncnn.param");
  265. yolov8.load_model("yolov8n_seg.ncnn.bin");
  266. // yolov8.load_param("yolov8s_seg.ncnn.param");
  267. // yolov8.load_model("yolov8s_seg.ncnn.bin");
  268. // yolov8.load_param("yolov8m_seg.ncnn.param");
  269. // yolov8.load_model("yolov8m_seg.ncnn.bin");
  270. const int target_size = 640;
  271. const float prob_threshold = 0.25f;
  272. const float nms_threshold = 0.45f;
  273. const float mask_threshold = 0.5f;
  274. int img_w = bgr.cols;
  275. int img_h = bgr.rows;
  276. // ultralytics/cfg/models/v8/yolov8.yaml
  277. std::vector<int> strides(3);
  278. strides[0] = 8;
  279. strides[1] = 16;
  280. strides[2] = 32;
  281. const int max_stride = 32;
  282. // letterbox pad to multiple of max_stride
  283. int w = img_w;
  284. int h = img_h;
  285. float scale = 1.f;
  286. if (w > h)
  287. {
  288. scale = (float)target_size / w;
  289. w = target_size;
  290. h = h * scale;
  291. }
  292. else
  293. {
  294. scale = (float)target_size / h;
  295. h = target_size;
  296. w = w * scale;
  297. }
  298. ncnn::Mat in = ncnn::Mat::from_pixels_resize(bgr.data, ncnn::Mat::PIXEL_BGR2RGB, img_w, img_h, w, h);
  299. // letterbox pad to target_size rectangle
  300. int wpad = (w + max_stride - 1) / max_stride * max_stride - w;
  301. int hpad = (h + max_stride - 1) / max_stride * max_stride - h;
  302. ncnn::Mat in_pad;
  303. ncnn::copy_make_border(in, in_pad, hpad / 2, hpad - hpad / 2, wpad / 2, wpad - wpad / 2, ncnn::BORDER_CONSTANT, 114.f);
  304. const float norm_vals[3] = {1 / 255.f, 1 / 255.f, 1 / 255.f};
  305. in_pad.substract_mean_normalize(0, norm_vals);
  306. ncnn::Extractor ex = yolov8.create_extractor();
  307. ex.input("in0", in_pad);
  308. ncnn::Mat out;
  309. ex.extract("out0", out);
  310. std::vector<Object> proposals;
  311. generate_proposals(out, strides, in_pad, prob_threshold, proposals);
  312. // sort all proposals by score from highest to lowest
  313. qsort_descent_inplace(proposals);
  314. // apply nms with nms_threshold
  315. std::vector<int> picked;
  316. nms_sorted_bboxes(proposals, picked, nms_threshold);
  317. int count = picked.size();
  318. if (count == 0)
  319. return 0;
  320. ncnn::Mat mask_feat;
  321. ex.extract("out1", mask_feat);
  322. ncnn::Mat mask_protos;
  323. ex.extract("out2", mask_protos);
  324. ncnn::Mat objects_mask_feat(mask_feat.w, 1, count);
  325. objects.resize(count);
  326. for (int i = 0; i < count; i++)
  327. {
  328. objects[i] = proposals[picked[i]];
  329. // adjust offset to original unpadded
  330. float x0 = (objects[i].rect.x - (wpad / 2)) / scale;
  331. float y0 = (objects[i].rect.y - (hpad / 2)) / scale;
  332. float x1 = (objects[i].rect.x + objects[i].rect.width - (wpad / 2)) / scale;
  333. float y1 = (objects[i].rect.y + objects[i].rect.height - (hpad / 2)) / scale;
  334. // clip
  335. x0 = std::max(std::min(x0, (float)(img_w - 1)), 0.f);
  336. y0 = std::max(std::min(y0, (float)(img_h - 1)), 0.f);
  337. x1 = std::max(std::min(x1, (float)(img_w - 1)), 0.f);
  338. y1 = std::max(std::min(y1, (float)(img_h - 1)), 0.f);
  339. objects[i].rect.x = x0;
  340. objects[i].rect.y = y0;
  341. objects[i].rect.width = x1 - x0;
  342. objects[i].rect.height = y1 - y0;
  343. // pick mask feat
  344. memcpy(objects_mask_feat.channel(i), mask_feat.row(objects[i].gindex), mask_feat.w * sizeof(float));
  345. }
  346. // process mask
  347. ncnn::Mat objects_mask;
  348. {
  349. ncnn::Layer* gemm = ncnn::create_layer("Gemm");
  350. ncnn::ParamDict pd;
  351. pd.set(6, 1); // constantC
  352. pd.set(7, count); // constantM
  353. pd.set(8, mask_protos.w * mask_protos.h); // constantN
  354. pd.set(9, mask_feat.w); // constantK
  355. pd.set(10, -1); // constant_broadcast_type_C
  356. pd.set(11, 1); // output_N1M
  357. gemm->load_param(pd);
  358. ncnn::Option opt;
  359. opt.num_threads = 1;
  360. opt.use_packing_layout = false;
  361. gemm->create_pipeline(opt);
  362. std::vector<ncnn::Mat> gemm_inputs(2);
  363. gemm_inputs[0] = objects_mask_feat;
  364. gemm_inputs[1] = mask_protos.reshape(mask_protos.w * mask_protos.h, 1, mask_protos.c);
  365. std::vector<ncnn::Mat> gemm_outputs(1);
  366. gemm->forward(gemm_inputs, gemm_outputs, opt);
  367. objects_mask = gemm_outputs[0].reshape(mask_protos.w, mask_protos.h, count);
  368. gemm->destroy_pipeline(opt);
  369. delete gemm;
  370. }
  371. {
  372. ncnn::Layer* sigmoid = ncnn::create_layer("Sigmoid");
  373. ncnn::Option opt;
  374. opt.num_threads = 1;
  375. opt.use_packing_layout = false;
  376. sigmoid->create_pipeline(opt);
  377. sigmoid->forward_inplace(objects_mask, opt);
  378. sigmoid->destroy_pipeline(opt);
  379. delete sigmoid;
  380. }
  381. // resize mask map
  382. {
  383. ncnn::Mat objects_mask_resized;
  384. ncnn::resize_bilinear(objects_mask, objects_mask_resized, in_pad.w / scale, in_pad.h / scale);
  385. objects_mask = objects_mask_resized;
  386. }
  387. // create per-object mask
  388. for (int i = 0; i < count; i++)
  389. {
  390. Object& obj = objects[i];
  391. const ncnn::Mat mm = objects_mask.channel(i);
  392. obj.mask = cv::Mat((int)obj.rect.height, (int)obj.rect.width, CV_8UC1);
  393. // adjust offset to original unpadded and clip inside object box
  394. for (int y = 0; y < (int)obj.rect.height; y++)
  395. {
  396. const float* pmm = mm.row((int)(hpad / 2 / scale + obj.rect.y + y)) + (int)(wpad / 2 / scale + obj.rect.x);
  397. uchar* pmask = obj.mask.ptr<uchar>(y);
  398. for (int x = 0; x < (int)obj.rect.width; x++)
  399. {
  400. pmask[x] = pmm[x] > mask_threshold ? 1 : 0;
  401. }
  402. }
  403. }
  404. return 0;
  405. }
  406. static void draw_objects(const cv::Mat& bgr, const std::vector<Object>& objects)
  407. {
  408. static const char* class_names[] = {
  409. "person", "bicycle", "car", "motorcycle", "airplane", "bus", "train", "truck", "boat", "traffic light",
  410. "fire hydrant", "stop sign", "parking meter", "bench", "bird", "cat", "dog", "horse", "sheep", "cow",
  411. "elephant", "bear", "zebra", "giraffe", "backpack", "umbrella", "handbag", "tie", "suitcase", "frisbee",
  412. "skis", "snowboard", "sports ball", "kite", "baseball bat", "baseball glove", "skateboard", "surfboard",
  413. "tennis racket", "bottle", "wine glass", "cup", "fork", "knife", "spoon", "bowl", "banana", "apple",
  414. "sandwich", "orange", "broccoli", "carrot", "hot dog", "pizza", "donut", "cake", "chair", "couch",
  415. "potted plant", "bed", "dining table", "toilet", "tv", "laptop", "mouse", "remote", "keyboard", "cell phone",
  416. "microwave", "oven", "toaster", "sink", "refrigerator", "book", "clock", "vase", "scissors", "teddy bear",
  417. "hair drier", "toothbrush"
  418. };
  419. static cv::Scalar colors[] = {
  420. cv::Scalar(244, 67, 54),
  421. cv::Scalar(233, 30, 99),
  422. cv::Scalar(156, 39, 176),
  423. cv::Scalar(103, 58, 183),
  424. cv::Scalar(63, 81, 181),
  425. cv::Scalar(33, 150, 243),
  426. cv::Scalar(3, 169, 244),
  427. cv::Scalar(0, 188, 212),
  428. cv::Scalar(0, 150, 136),
  429. cv::Scalar(76, 175, 80),
  430. cv::Scalar(139, 195, 74),
  431. cv::Scalar(205, 220, 57),
  432. cv::Scalar(255, 235, 59),
  433. cv::Scalar(255, 193, 7),
  434. cv::Scalar(255, 152, 0),
  435. cv::Scalar(255, 87, 34),
  436. cv::Scalar(121, 85, 72),
  437. cv::Scalar(158, 158, 158),
  438. cv::Scalar(96, 125, 139)
  439. };
  440. cv::Mat image = bgr.clone();
  441. for (size_t i = 0; i < objects.size(); i++)
  442. {
  443. const Object& obj = objects[i];
  444. const cv::Scalar& color = colors[i % 19];
  445. fprintf(stderr, "%d = %.5f at %.2f %.2f %.2f x %.2f\n", obj.label, obj.prob,
  446. obj.rect.x, obj.rect.y, obj.rect.width, obj.rect.height);
  447. for (int y = 0; y < (int)obj.rect.height; y++)
  448. {
  449. const uchar* maskptr = obj.mask.ptr<const uchar>(y);
  450. uchar* bgrptr = image.ptr<uchar>((int)obj.rect.y + y) + (int)obj.rect.x * 3;
  451. for (int x = 0; x < (int)obj.rect.width; x++)
  452. {
  453. if (maskptr[x])
  454. {
  455. bgrptr[0] = bgrptr[0] * 0.5 + color[0] * 0.5;
  456. bgrptr[1] = bgrptr[1] * 0.5 + color[1] * 0.5;
  457. bgrptr[2] = bgrptr[2] * 0.5 + color[2] * 0.5;
  458. }
  459. bgrptr += 3;
  460. }
  461. }
  462. cv::rectangle(image, obj.rect, color);
  463. char text[256];
  464. sprintf(text, "%s %.1f%%", class_names[obj.label], obj.prob * 100);
  465. int baseLine = 0;
  466. cv::Size label_size = cv::getTextSize(text, cv::FONT_HERSHEY_SIMPLEX, 0.5, 1, &baseLine);
  467. int x = obj.rect.x;
  468. int y = obj.rect.y - label_size.height - baseLine;
  469. if (y < 0)
  470. y = 0;
  471. if (x + label_size.width > image.cols)
  472. x = image.cols - label_size.width;
  473. cv::rectangle(image, cv::Rect(cv::Point(x, y), cv::Size(label_size.width, label_size.height + baseLine)),
  474. cv::Scalar(255, 255, 255), -1);
  475. cv::putText(image, text, cv::Point(x, y + label_size.height),
  476. cv::FONT_HERSHEY_SIMPLEX, 0.5, cv::Scalar(0, 0, 0));
  477. }
  478. cv::imshow("image", image);
  479. cv::waitKey(0);
  480. }
  481. int main(int argc, char** argv)
  482. {
  483. if (argc != 2)
  484. {
  485. fprintf(stderr, "Usage: %s [imagepath]\n", argv[0]);
  486. return -1;
  487. }
  488. const char* imagepath = argv[1];
  489. cv::Mat m = cv::imread(imagepath, 1);
  490. if (m.empty())
  491. {
  492. fprintf(stderr, "cv::imread %s failed\n", imagepath);
  493. return -1;
  494. }
  495. std::vector<Object> objects;
  496. detect_yolov8_seg(m, objects);
  497. draw_objects(m, objects);
  498. return 0;
  499. }